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2071 lines
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<title>LIBSVM FAQ</title>
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<body bgcolor="#ffffcc">
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<a name="_TOP"><b><h1><a
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href=http://www.csie.ntu.edu.tw/~cjlin/libsvm>LIBSVM</a> FAQ </h1></b></a>
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<b>last modified : </b>
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Thu, 20 Mar 2014 16:05:14 GMT
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<class="categories">
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<li><a
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href="#_TOP">All Questions</a>(81)</li>
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<ul><b>
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<li><a
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href="#/Q01:_Some_sample_uses_of_libsvm">Q01:_Some_sample_uses_of_libsvm</a>(2)</li>
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<li><a
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href="#/Q02:_Installation_and_running_the_program">Q02:_Installation_and_running_the_program</a>(13)</li>
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<li><a
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href="#/Q03:_Data_preparation">Q03:_Data_preparation</a>(7)</li>
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<li><a
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href="#/Q04:_Training_and_prediction">Q04:_Training_and_prediction</a>(28)</li>
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<li><a
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href="#/Q05:_Cross_validation_and_parameter_selection">Q05:_Cross_validation_and_parameter_selection</a>(8)</li>
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<li><a
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href="#/Q06:_Probability_outputs">Q06:_Probability_outputs</a>(3)</li>
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<li><a
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href="#/Q07:_Graphic_interface">Q07:_Graphic_interface</a>(3)</li>
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<li><a
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href="#/Q08:_Java_version_of_libsvm">Q08:_Java_version_of_libsvm</a>(4)</li>
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<li><a
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href="#/Q09:_Python_interface">Q09:_Python_interface</a>(1)</li>
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<li><a
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href="#/Q10:_MATLAB_interface">Q10:_MATLAB_interface</a>(12)</li>
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</b></ul>
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</li>
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<ul><ul class="headlines">
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<li class="headlines_item"><a href="#faq101">Some courses which have used libsvm as a tool</a></li>
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<li class="headlines_item"><a href="#faq102">Some applications/tools which have used libsvm </a></li>
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<li class="headlines_item"><a href="#f201">Where can I find documents/videos of libsvm ?</a></li>
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<li class="headlines_item"><a href="#f202">Where are change log and earlier versions?</a></li>
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<li class="headlines_item"><a href="#f203">How to cite LIBSVM?</a></li>
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<li class="headlines_item"><a href="#f204">I would like to use libsvm in my software. Is there any license problem?</a></li>
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<li class="headlines_item"><a href="#f205">Is there a repository of additional tools based on libsvm?</a></li>
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<li class="headlines_item"><a href="#f206">On unix machines, I got "error in loading shared libraries" or "cannot open shared object file." What happened ? </a></li>
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<li class="headlines_item"><a href="#f207">I have modified the source and would like to build the graphic interface "svm-toy" on MS windows. How should I do it ?</a></li>
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<li class="headlines_item"><a href="#f208">I am an MS windows user but why only one (svm-toy) of those precompiled .exe actually runs ? </a></li>
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<li class="headlines_item"><a href="#f209">What is the difference between "." and "*" outputed during training? </a></li>
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<li class="headlines_item"><a href="#f210">Why occasionally the program (including MATLAB or other interfaces) crashes and gives a segmentation fault?</a></li>
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<li class="headlines_item"><a href="#f211">How to build a dynamic library (.dll file) on MS windows?</a></li>
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<li class="headlines_item"><a href="#f212">On some systems (e.g., Ubuntu), compiling LIBSVM gives many warning messages. Is this a problem and how to disable the warning message?</a></li>
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<li class="headlines_item"><a href="#f213">In LIBSVM, why you don't use certain C/C++ library functions to make the code shorter?</a></li>
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<li class="headlines_item"><a href="#f301">Why sometimes not all attributes of a data appear in the training/model files ?</a></li>
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<li class="headlines_item"><a href="#f302">What if my data are non-numerical ?</a></li>
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<li class="headlines_item"><a href="#f303">Why do you consider sparse format ? Will the training of dense data be much slower ?</a></li>
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<li class="headlines_item"><a href="#f304">Why sometimes the last line of my data is not read by svm-train?</a></li>
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<li class="headlines_item"><a href="#f305">Is there a program to check if my data are in the correct format?</a></li>
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<li class="headlines_item"><a href="#f306">May I put comments in data files?</a></li>
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<li class="headlines_item"><a href="#f307">How to convert other data formats to LIBSVM format?</a></li>
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<li class="headlines_item"><a href="#f401">The output of training C-SVM is like the following. What do they mean?</a></li>
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<li class="headlines_item"><a href="#f402">Can you explain more about the model file?</a></li>
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<li class="headlines_item"><a href="#f403">Should I use float or double to store numbers in the cache ?</a></li>
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<li class="headlines_item"><a href="#f405">Does libsvm have special treatments for linear SVM?</a></li>
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<li class="headlines_item"><a href="#f406">The number of free support vectors is large. What should I do?</a></li>
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<li class="headlines_item"><a href="#f407">Should I scale training and testing data in a similar way?</a></li>
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<li class="headlines_item"><a href="#f408">Does it make a big difference if I scale each attribute to [0,1] instead of [-1,1]?</a></li>
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<li class="headlines_item"><a href="#f409">The prediction rate is low. How could I improve it?</a></li>
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<li class="headlines_item"><a href="#f410">My data are unbalanced. Could libsvm handle such problems?</a></li>
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<li class="headlines_item"><a href="#f411">What is the difference between nu-SVC and C-SVC?</a></li>
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<li class="headlines_item"><a href="#f412">The program keeps running (without showing any output). What should I do?</a></li>
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<li class="headlines_item"><a href="#f413">The program keeps running (with output, i.e. many dots). What should I do?</a></li>
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<li class="headlines_item"><a href="#f414">The training time is too long. What should I do?</a></li>
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<li class="headlines_item"><a href="#f4141">Does shrinking always help?</a></li>
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<li class="headlines_item"><a href="#f415">How do I get the decision value(s)?</a></li>
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<li class="headlines_item"><a href="#f4151">How do I get the distance between a point and the hyperplane?</a></li>
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<li class="headlines_item"><a href="#f416">On 32-bit machines, if I use a large cache (i.e. large -m) on a linux machine, why sometimes I get "segmentation fault ?"</a></li>
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<li class="headlines_item"><a href="#f417">How do I disable screen output of svm-train?</a></li>
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<li class="headlines_item"><a href="#f418">I would like to use my own kernel. Any example? In svm.cpp, there are two subroutines for kernel evaluations: k_function() and kernel_function(). Which one should I modify ?</a></li>
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<li class="headlines_item"><a href="#f419">What method does libsvm use for multi-class SVM ? Why don't you use the "1-against-the rest" method?</a></li>
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<li class="headlines_item"><a href="#f422">I would like to solve L2-loss SVM (i.e., error term is quadratic). How should I modify the code ?</a></li>
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<li class="headlines_item"><a href="#f425">In one-class SVM, parameter nu should be an upper bound of the training error rate. Why sometimes I get a training error rate bigger than nu?</a></li>
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<li class="headlines_item"><a href="#f427">Why the code gives NaN (not a number) results?</a></li>
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<li class="headlines_item"><a href="#f430">Why the sign of predicted labels and decision values are sometimes reversed?</a></li>
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<li class="headlines_item"><a href="#f431">I don't know class labels of test data. What should I put in the first column of the test file?</a></li>
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<li class="headlines_item"><a href="#f432">How can I use OpenMP to parallelize LIBSVM on a multicore/shared-memory computer?</a></li>
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<li class="headlines_item"><a href="#f433">How could I know which training instances are support vectors?</a></li>
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<li class="headlines_item"><a href="#f434">Why sv_indices (indices of support vectors) are not stored in the saved model file?</a></li>
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<li class="headlines_item"><a href="#f501">After doing cross validation, why there is no model file outputted ?</a></li>
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<li class="headlines_item"><a href="#f502">Why my cross-validation results are different from those in the Practical Guide?</a></li>
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<li class="headlines_item"><a href="#f503">On some systems CV accuracy is the same in several runs. How could I use different data partitions? In other words, how do I set random seed in LIBSVM?</a></li>
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<li class="headlines_item"><a href="#f504">Why on windows sometimes grid.py fails?</a></li>
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<li class="headlines_item"><a href="#f505">Why grid.py/easy.py sometimes generates the following warning message?</a></li>
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<li class="headlines_item"><a href="#f506">How do I choose the kernel?</a></li>
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<li class="headlines_item"><a href="#f507">How does LIBSVM perform parameter selection for multi-class problems? </a></li>
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<li class="headlines_item"><a href="#f508">How do I choose parameters for one-class SVM as training data are in only one class?</a></li>
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<li class="headlines_item"><a href="#f425">Why training a probability model (i.e., -b 1) takes a longer time?</a></li>
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<li class="headlines_item"><a href="#f426">Why using the -b option does not give me better accuracy?</a></li>
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<li class="headlines_item"><a href="#f427">Why using svm-predict -b 0 and -b 1 gives different accuracy values?</a></li>
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<li class="headlines_item"><a href="#f501">How can I save images drawn by svm-toy?</a></li>
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<li class="headlines_item"><a href="#f502">I press the "load" button to load data points but why svm-toy does not draw them ?</a></li>
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<li class="headlines_item"><a href="#f503">I would like svm-toy to handle more than three classes of data, what should I do ?</a></li>
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<li class="headlines_item"><a href="#f601">What is the difference between Java version and C++ version of libsvm?</a></li>
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<li class="headlines_item"><a href="#f602">Is the Java version significantly slower than the C++ version?</a></li>
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<li class="headlines_item"><a href="#f603">While training I get the following error message: java.lang.OutOfMemoryError. What is wrong?</a></li>
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<li class="headlines_item"><a href="#f604">Why you have the main source file svm.m4 and then transform it to svm.java?</a></li>
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<li class="headlines_item"><a href="#f704">Except the python-C++ interface provided, could I use Jython to call libsvm ?</a></li>
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<li class="headlines_item"><a href="#f801">I compile the MATLAB interface without problem, but why errors occur while running it?</a></li>
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<li class="headlines_item"><a href="#f8011">On 64bit Windows I compile the MATLAB interface without problem, but why errors occur while running it?</a></li>
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<li class="headlines_item"><a href="#f802">Does the MATLAB interface provide a function to do scaling?</a></li>
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<li class="headlines_item"><a href="#f803">How could I use MATLAB interface for parameter selection?</a></li>
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<li class="headlines_item"><a href="#f8031">I use MATLAB parallel programming toolbox on a multi-core environment for parameter selection. Why the program is even slower?</a></li>
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<li class="headlines_item"><a href="#f8032">How do I use LIBSVM with OpenMP under MATLAB?</a></li>
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<li class="headlines_item"><a href="#f804">How could I generate the primal variable w of linear SVM?</a></li>
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<li class="headlines_item"><a href="#f805">Is there an OCTAVE interface for libsvm?</a></li>
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<li class="headlines_item"><a href="#f806">How to handle the name conflict between svmtrain in the libsvm matlab interface and that in MATLAB bioinformatics toolbox?</a></li>
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<li class="headlines_item"><a href="#f807">On Windows I got an error message "Invalid MEX-file: Specific module not found" when running the pre-built MATLAB interface in the windows sub-directory. What should I do?</a></li>
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<li class="headlines_item"><a href="#f808">LIBSVM supports 1-vs-1 multi-class classification. If instead I would like to use 1-vs-rest, how to implement it using MATLAB interface?</a></li>
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<li class="headlines_item"><a href="#f809">I tried to install matlab interface on mac, but failed. What should I do?</a></li>
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</ul></ul>
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<hr size="5" noshade />
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<p/>
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<a name="/Q01:_Some_sample_uses_of_libsvm"></a>
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<a name="faq101"><b>Q: Some courses which have used libsvm as a tool</b></a>
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<br/>
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<ul>
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<li><a href=http://lmb.informatik.uni-freiburg.de/lectures/svm_seminar/>Institute for Computer Science,
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Faculty of Applied Science, University of Freiburg, Germany
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</a>
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<li> <a href=http://www.cs.vu.nl/~elena/ml.html>
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Division of Mathematics and Computer Science.
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Faculteit der Exacte Wetenschappen
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Vrije Universiteit, The Netherlands. </a>
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<li>
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<a href=http://www.cae.wisc.edu/~ece539/matlab/>
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Electrical and Computer Engineering Department,
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University of Wisconsin-Madison
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</a>
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<li>
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<a href=http://www.hpl.hp.com/personal/Carl_Staelin/cs236601/project.html>
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Technion (Israel Institute of Technology), Israel.
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<li>
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<a href=http://www.cise.ufl.edu/~fu/learn.html>
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Computer and Information Sciences Dept., University of Florida</a>
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<li>
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<a href=http://www.uonbi.ac.ke/acad_depts/ics/course_material/machine_learning/ML_and_DM_Resources.html>
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The Institute of Computer Science,
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University of Nairobi, Kenya.</a>
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<li>
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<a href=http://cerium.raunvis.hi.is/~tpr/courseware/svm/hugbunadur.html>
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Applied Mathematics and Computer Science, University of Iceland.
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<li>
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<a href=http://chicago05.mlss.cc/tiki/tiki-read_article.php?articleId=2>
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SVM tutorial in machine learning
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summer school, University of Chicago, 2005.
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</a>
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</ul>
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<p align="right">
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<a href="#_TOP">[Go Top]</a>
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<hr/>
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<a name="/Q01:_Some_sample_uses_of_libsvm"></a>
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<a name="faq102"><b>Q: Some applications/tools which have used libsvm </b></a>
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<br/>
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(and maybe liblinear).
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<ul>
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<li>
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<a href=http://people.csail.mit.edu/jjl/libpmk/>LIBPMK: A Pyramid Match Toolkit</a>
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</li>
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<li><a href=http://maltparser.org/>Maltparser</a>:
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a system for data-driven dependency parsing
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</li>
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<li>
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<a href=http://www.pymvpa.org/>PyMVPA: python tool for classifying neuroimages</a>
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</li>
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<li>
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<a href=http://solpro.proteomics.ics.uci.edu/>
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SOLpro: protein solubility predictor
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</a>
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</li>
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<li>
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<a href=http://bdval.campagnelab.org>
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BDVal</a>: biomarker discovery in high-throughput datasets.
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</li>
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<li><a href=http://johel.m.free.fr/demo_045.htm>
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Realtime object recognition</a>
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</li>
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<li><a href=http://scikit-learn.sourceforge.net/>
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scikits.learn: machine learning in Python</a>
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</li>
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</ul>
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<p align="right">
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<a href="#_TOP">[Go Top]</a>
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<hr/>
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<a name="/Q02:_Installation_and_running_the_program"></a>
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<a name="f201"><b>Q: Where can I find documents/videos of libsvm ?</b></a>
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<br/>
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<p>
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<ul>
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<li>
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Official implementation document:
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<br>
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C.-C. Chang and
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C.-J. Lin.
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LIBSVM
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: a library for support vector machines.
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ACM Transactions on Intelligent
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Systems and Technology, 2:27:1--27:27, 2011.
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<a href="http://www.csie.ntu.edu.tw/~cjlin/papers/libsvm.pdf">pdf</a>, <a href=http://www.csie.ntu.edu.tw/~cjlin/papers/libsvm.ps.gz>ps.gz</a>,
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<a href=http://portal.acm.org/citation.cfm?id=1961199&CFID=29950432&CFTOKEN=30974232>ACM digital lib</a>.
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<li> Instructions for using LIBSVM are in the README files in the main directory and some sub-directories.
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<br>
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README in the main directory: details all options, data format, and library calls.
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<br>
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tools/README: parameter selection and other tools
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<li>
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A guide for beginners:
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<br>
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C.-W. Hsu, C.-C. Chang, and
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C.-J. Lin.
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<A HREF="http://www.csie.ntu.edu.tw/~cjlin/papers/guide/guide.pdf">
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A practical guide to support vector classification
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</A>
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<li> An <a href=http://www.youtube.com/watch?v=gePWtNAQcK8>introductory video</a>
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for windows users.
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</ul>
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<p align="right">
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<a href="#_TOP">[Go Top]</a>
|
||
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<hr/>
|
||
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<a name="/Q02:_Installation_and_running_the_program"></a>
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<a name="f202"><b>Q: Where are change log and earlier versions?</b></a>
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<br/>
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<p>See <a href="http://www.csie.ntu.edu.tw/~cjlin/libsvm/log">the change log</a>.
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<p> You can download earlier versions
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<a href="http://www.csie.ntu.edu.tw/~cjlin/libsvm/oldfiles">here</a>.
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<p align="right">
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<a href="#_TOP">[Go Top]</a>
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<hr/>
|
||
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<a name="/Q02:_Installation_and_running_the_program"></a>
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<a name="f203"><b>Q: How to cite LIBSVM?</b></a>
|
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<br/>
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<p>
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||
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Please cite the following paper:
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<p>
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Chih-Chung Chang and Chih-Jen Lin, LIBSVM
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: a library for support vector machines.
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ACM Transactions on Intelligent Systems and Technology, 2:27:1--27:27, 2011.
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Software available at http://www.csie.ntu.edu.tw/~cjlin/libsvm
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<p>
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The bibtex format is
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<pre>
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@article{CC01a,
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author = {Chang, Chih-Chung and Lin, Chih-Jen},
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title = {{LIBSVM}: A library for support vector machines},
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journal = {ACM Transactions on Intelligent Systems and Technology},
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volume = {2},
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issue = {3},
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year = {2011},
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pages = {27:1--27:27},
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note = {Software available at \url{http://www.csie.ntu.edu.tw/~cjlin/libsvm}}
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}
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</pre>
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<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f204"><b>Q: I would like to use libsvm in my software. Is there any license problem?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
The libsvm license ("the modified BSD license")
|
||
|
is compatible with many
|
||
|
free software licenses such as GPL. Hence, it is very easy to
|
||
|
use libsvm in your software.
|
||
|
Please check the COPYRIGHT file in detail. Basically
|
||
|
you need to
|
||
|
<ol>
|
||
|
<li>
|
||
|
Clearly indicate that LIBSVM is used.
|
||
|
</li>
|
||
|
<li>
|
||
|
Retain the LIBSVM COPYRIGHT file in your software.
|
||
|
</li>
|
||
|
</ol>
|
||
|
It can also be used in commercial products.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f205"><b>Q: Is there a repository of additional tools based on libsvm?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Yes, see <a href="http://www.csie.ntu.edu.tw/~cjlin/libsvmtools">libsvm
|
||
|
tools</a>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f206"><b>Q: On unix machines, I got "error in loading shared libraries" or "cannot open shared object file." What happened ? </b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
This usually happens if you compile the code
|
||
|
on one machine and run it on another which has incompatible
|
||
|
libraries.
|
||
|
Try to recompile the program on that machine or use static linking.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f207"><b>Q: I have modified the source and would like to build the graphic interface "svm-toy" on MS windows. How should I do it ?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
Build it as a project by choosing "Win32 Project."
|
||
|
On the other hand, for "svm-train" and "svm-predict"
|
||
|
you want to choose "Win32 Console Project."
|
||
|
After libsvm 2.5, you can also use the file Makefile.win.
|
||
|
See details in README.
|
||
|
|
||
|
|
||
|
<p>
|
||
|
If you are not using Makefile.win and see the following
|
||
|
link error
|
||
|
<pre>
|
||
|
LIBCMTD.lib(wwincrt0.obj) : error LNK2001: unresolved external symbol
|
||
|
_wWinMain@16
|
||
|
</pre>
|
||
|
you may have selected a wrong project type.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f208"><b>Q: I am an MS windows user but why only one (svm-toy) of those precompiled .exe actually runs ? </b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
You need to open a command window
|
||
|
and type svmtrain.exe to see all options.
|
||
|
Some examples are in README file.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f209"><b>Q: What is the difference between "." and "*" outputed during training? </b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
"." means every 1,000 iterations (or every #data
|
||
|
iterations is your #data is less than 1,000).
|
||
|
"*" means that after iterations of using
|
||
|
a smaller shrunk problem,
|
||
|
we reset to use the whole set. See the
|
||
|
<a href=../papers/libsvm.pdf>implementation document</a> for details.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f210"><b>Q: Why occasionally the program (including MATLAB or other interfaces) crashes and gives a segmentation fault?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
Very likely the program consumes too much memory than what the
|
||
|
operating system can provide. Try a smaller data and see if the
|
||
|
program still crashes.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f211"><b>Q: How to build a dynamic library (.dll file) on MS windows?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
The easiest way is to use Makefile.win.
|
||
|
See details in README.
|
||
|
|
||
|
Alternatively, you can use Visual C++. Here is
|
||
|
the example using Visual Studio .Net 2008:
|
||
|
<ol>
|
||
|
<li>Create a Win32 empty DLL project and set (in Project->$Project_Name
|
||
|
Properties...->Configuration) to "Release."
|
||
|
About how to create a new dynamic link library, please refer to
|
||
|
<a href=http://msdn2.microsoft.com/en-us/library/ms235636(VS.80).aspx>http://msdn2.microsoft.com/en-us/library/ms235636(VS.80).aspx</a>
|
||
|
|
||
|
<li> Add svm.cpp, svm.h to your project.
|
||
|
<li> Add __WIN32__ and _CRT_SECURE_NO_DEPRECATE to Preprocessor definitions (in
|
||
|
Project->$Project_Name Properties...->C/C++->Preprocessor)
|
||
|
<li> Set Create/Use Precompiled Header to Not Using Precompiled Headers
|
||
|
(in Project->$Project_Name Properties...->C/C++->Precompiled Headers)
|
||
|
<li> Set the path for the Modulation Definition File svm.def (in
|
||
|
Project->$Project_Name Properties...->Linker->input
|
||
|
<li> Build the DLL.
|
||
|
<li> Rename the dll file to libsvm.dll and move it to the correct path.
|
||
|
</ol>
|
||
|
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f212"><b>Q: On some systems (e.g., Ubuntu), compiling LIBSVM gives many warning messages. Is this a problem and how to disable the warning message?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
If you are using a version before 3.18, probably you see
|
||
|
a warning message like
|
||
|
<pre>
|
||
|
svm.cpp:2730: warning: ignoring return value of int fscanf(FILE*, const char*, ...), declared with attribute warn_unused_result
|
||
|
</pre>
|
||
|
This is not a problem; see <a href=https://wiki.ubuntu.com/CompilerFlags#-D_FORTIFY_SOURCE=2>this page</a> for more
|
||
|
details of ubuntu systems.
|
||
|
To disable the warning message you can replace
|
||
|
<pre>
|
||
|
CFLAGS = -Wall -Wconversion -O3 -fPIC
|
||
|
</pre>
|
||
|
with
|
||
|
<pre>
|
||
|
CFLAGS = -Wall -Wconversion -O3 -fPIC -U_FORTIFY_SOURCE
|
||
|
</pre>
|
||
|
in Makefile.
|
||
|
<p> After version 3.18, we have a better setting so that such warning messages do not appear.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q02:_Installation_and_running_the_program"></a>
|
||
|
<a name="f213"><b>Q: In LIBSVM, why you don't use certain C/C++ library functions to make the code shorter?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
For portability, we use only features defined in ISO C89. Note that features in ISO C99 may not be available everywhere.
|
||
|
Even the newest gcc lacks some features in C99 (see <a href=http://gcc.gnu.org/c99status.html>http://gcc.gnu.org/c99status.html</a> for details).
|
||
|
If the situation changes in the future,
|
||
|
we might consider using these newer features.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f301"><b>Q: Why sometimes not all attributes of a data appear in the training/model files ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
libsvm uses the so called "sparse" format where zero
|
||
|
values do not need to be stored. Hence a data with attributes
|
||
|
<pre>
|
||
|
1 0 2 0
|
||
|
</pre>
|
||
|
is represented as
|
||
|
<pre>
|
||
|
1:1 3:2
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f302"><b>Q: What if my data are non-numerical ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Currently libsvm supports only numerical data.
|
||
|
You may have to change non-numerical data to
|
||
|
numerical. For example, you can use several
|
||
|
binary attributes to represent a categorical
|
||
|
attribute.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f303"><b>Q: Why do you consider sparse format ? Will the training of dense data be much slower ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
This is a controversial issue. The kernel
|
||
|
evaluation (i.e. inner product) of sparse vectors is slower
|
||
|
so the total training time can be at least twice or three times
|
||
|
of that using the dense format.
|
||
|
However, we cannot support only dense format as then we CANNOT
|
||
|
handle extremely sparse cases. Simplicity of the code is another
|
||
|
concern. Right now we decide to support
|
||
|
the sparse format only.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f304"><b>Q: Why sometimes the last line of my data is not read by svm-train?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
We assume that you have '\n' in the end of
|
||
|
each line. So please press enter in the end
|
||
|
of your last line.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f305"><b>Q: Is there a program to check if my data are in the correct format?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
The svm-train program in libsvm conducts only a simple check of the input data. To do a
|
||
|
detailed check, after libsvm 2.85, you can use the python script tools/checkdata.py. See tools/README for details.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f306"><b>Q: May I put comments in data files?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
We don't officially support this. But, currently LIBSVM
|
||
|
is able to process data in the following
|
||
|
format:
|
||
|
<pre>
|
||
|
1 1:2 2:1 # your comments
|
||
|
</pre>
|
||
|
Note that the character ":" should not appear in your
|
||
|
comments.
|
||
|
<!--
|
||
|
No, for simplicity we don't support that.
|
||
|
However, you can easily preprocess your data before
|
||
|
using libsvm. For example,
|
||
|
if you have the following data
|
||
|
<pre>
|
||
|
test.txt
|
||
|
1 1:2 2:1 # proten A
|
||
|
</pre>
|
||
|
then on unix machines you can do
|
||
|
<pre>
|
||
|
cut -d '#' -f 1 < test.txt > test.features
|
||
|
cut -d '#' -f 2 < test.txt > test.comments
|
||
|
svm-predict test.feature train.model test.predicts
|
||
|
paste -d '#' test.predicts test.comments | sed 's/#/ #/' > test.results
|
||
|
</pre>
|
||
|
-->
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q03:_Data_preparation"></a>
|
||
|
<a name="f307"><b>Q: How to convert other data formats to LIBSVM format?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
It depends on your data format. A simple way is to use
|
||
|
libsvmwrite in the libsvm matlab/octave interface.
|
||
|
|
||
|
Take a CSV (comma-separated values) file
|
||
|
in UCI machine learning repository as an example.
|
||
|
We download <a href=http://archive.ics.uci.edu/ml/machine-learning-databases/spect/SPECTF.train>SPECTF.train</a>.
|
||
|
Labels are in the first column. The following steps produce
|
||
|
a file in the libsvm format.
|
||
|
<pre>
|
||
|
matlab> SPECTF = csvread('SPECTF.train'); % read a csv file
|
||
|
matlab> labels = SPECTF(:, 1); % labels from the 1st column
|
||
|
matlab> features = SPECTF(:, 2:end);
|
||
|
matlab> features_sparse = sparse(features); % features must be in a sparse matrix
|
||
|
matlab> libsvmwrite('SPECTFlibsvm.train', labels, features_sparse);
|
||
|
</pre>
|
||
|
The tranformed data are stored in SPECTFlibsvm.train.
|
||
|
|
||
|
<p>
|
||
|
Alternatively, you can use <a href="./faqfiles/convert.c">convert.c</a>
|
||
|
to convert CSV format to libsvm format.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f401"><b>Q: The output of training C-SVM is like the following. What do they mean?</b></a>
|
||
|
<br/>
|
||
|
<br>optimization finished, #iter = 219
|
||
|
<br>nu = 0.431030
|
||
|
<br>obj = -100.877286, rho = 0.424632
|
||
|
<br>nSV = 132, nBSV = 107
|
||
|
<br>Total nSV = 132
|
||
|
<p>
|
||
|
obj is the optimal objective value of the dual SVM problem.
|
||
|
rho is the bias term in the decision function
|
||
|
sgn(w^Tx - rho).
|
||
|
nSV and nBSV are number of support vectors and bounded support
|
||
|
vectors (i.e., alpha_i = C). nu-svm is a somewhat equivalent
|
||
|
form of C-SVM where C is replaced by nu. nu simply shows the
|
||
|
corresponding parameter. More details are in
|
||
|
<a href="http://www.csie.ntu.edu.tw/~cjlin/papers/libsvm.pdf">
|
||
|
libsvm document</a>.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f402"><b>Q: Can you explain more about the model file?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
In the model file, after parameters and other informations such as labels , each line represents a support vector.
|
||
|
Support vectors are listed in the order of "labels" shown earlier.
|
||
|
(i.e., those from the first class in the "labels" list are
|
||
|
grouped first, and so on.)
|
||
|
If k is the total number of classes,
|
||
|
in front of a support vector in class j, there are
|
||
|
k-1 coefficients
|
||
|
y*alpha where alpha are dual solution of the
|
||
|
following two class problems:
|
||
|
<br>
|
||
|
1 vs j, 2 vs j, ..., j-1 vs j, j vs j+1, j vs j+2, ..., j vs k
|
||
|
<br>
|
||
|
and y=1 in first j-1 coefficients, y=-1 in the remaining
|
||
|
k-j coefficients.
|
||
|
|
||
|
For example, if there are 4 classes, the file looks like:
|
||
|
|
||
|
<pre>
|
||
|
+-+-+-+--------------------+
|
||
|
|1|1|1| |
|
||
|
|v|v|v| SVs from class 1 |
|
||
|
|2|3|4| |
|
||
|
+-+-+-+--------------------+
|
||
|
|1|2|2| |
|
||
|
|v|v|v| SVs from class 2 |
|
||
|
|2|3|4| |
|
||
|
+-+-+-+--------------------+
|
||
|
|1|2|3| |
|
||
|
|v|v|v| SVs from class 3 |
|
||
|
|3|3|4| |
|
||
|
+-+-+-+--------------------+
|
||
|
|1|2|3| |
|
||
|
|v|v|v| SVs from class 4 |
|
||
|
|4|4|4| |
|
||
|
+-+-+-+--------------------+
|
||
|
</pre>
|
||
|
See also
|
||
|
<a href="#f804"> an illustration using
|
||
|
MATLAB/OCTAVE.</a>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f403"><b>Q: Should I use float or double to store numbers in the cache ?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
We have float as the default as you can store more numbers
|
||
|
in the cache.
|
||
|
In general this is good enough but for few difficult
|
||
|
cases (e.g. C very very large) where solutions are huge
|
||
|
numbers, it might be possible that the numerical precision is not
|
||
|
enough using only float.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f405"><b>Q: Does libsvm have special treatments for linear SVM?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
|
||
|
No, libsvm solves linear/nonlinear SVMs by the
|
||
|
same way.
|
||
|
Some tricks may save training/testing time if the
|
||
|
linear kernel is used,
|
||
|
so libsvm is <b>NOT</b> particularly efficient for linear SVM,
|
||
|
especially when
|
||
|
C is large and
|
||
|
the number of data is much larger
|
||
|
than the number of attributes.
|
||
|
You can either
|
||
|
<ul>
|
||
|
<li>
|
||
|
Use small C only. We have shown in the following paper
|
||
|
that after C is larger than a certain threshold,
|
||
|
the decision function is the same.
|
||
|
<p>
|
||
|
<a href="http://guppy.mpe.nus.edu.sg/~mpessk/">S. S. Keerthi</a>
|
||
|
and
|
||
|
<B>C.-J. Lin</B>.
|
||
|
<A HREF="papers/limit.pdf">
|
||
|
Asymptotic behaviors of support vector machines with
|
||
|
Gaussian kernel
|
||
|
</A>
|
||
|
.
|
||
|
<I><A HREF="http://mitpress.mit.edu/journal-home.tcl?issn=08997667">Neural Computation</A></I>, 15(2003), 1667-1689.
|
||
|
|
||
|
|
||
|
<li>
|
||
|
Check <a href=http://www.csie.ntu.edu.tw/~cjlin/liblinear>liblinear</a>,
|
||
|
which is designed for large-scale linear classification.
|
||
|
</ul>
|
||
|
|
||
|
<p> Please also see our <a href=../papers/guide/guide.pdf>SVM guide</a>
|
||
|
on the discussion of using RBF and linear
|
||
|
kernels.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f406"><b>Q: The number of free support vectors is large. What should I do?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
This usually happens when the data are overfitted.
|
||
|
If attributes of your data are in large ranges,
|
||
|
try to scale them. Then the region
|
||
|
of appropriate parameters may be larger.
|
||
|
Note that there is a scale program
|
||
|
in libsvm.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f407"><b>Q: Should I scale training and testing data in a similar way?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Yes, you can do the following:
|
||
|
<pre>
|
||
|
> svm-scale -s scaling_parameters train_data > scaled_train_data
|
||
|
> svm-scale -r scaling_parameters test_data > scaled_test_data
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f408"><b>Q: Does it make a big difference if I scale each attribute to [0,1] instead of [-1,1]?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
For the linear scaling method, if the RBF kernel is
|
||
|
used and parameter selection is conducted, there
|
||
|
is no difference. Assume Mi and mi are
|
||
|
respectively the maximal and minimal values of the
|
||
|
ith attribute. Scaling to [0,1] means
|
||
|
<pre>
|
||
|
x'=(x-mi)/(Mi-mi)
|
||
|
</pre>
|
||
|
For [-1,1],
|
||
|
<pre>
|
||
|
x''=2(x-mi)/(Mi-mi)-1.
|
||
|
</pre>
|
||
|
In the RBF kernel,
|
||
|
<pre>
|
||
|
x'-y'=(x-y)/(Mi-mi), x''-y''=2(x-y)/(Mi-mi).
|
||
|
</pre>
|
||
|
Hence, using (C,g) on the [0,1]-scaled data is the
|
||
|
same as (C,g/2) on the [-1,1]-scaled data.
|
||
|
|
||
|
<p> Though the performance is the same, the computational
|
||
|
time may be different. For data with many zero entries,
|
||
|
[0,1]-scaling keeps the sparsity of input data and hence
|
||
|
may save the time.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f409"><b>Q: The prediction rate is low. How could I improve it?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Try to use the model selection tool grid.py in the tools
|
||
|
directory find
|
||
|
out good parameters. To see the importance of model selection,
|
||
|
please
|
||
|
see our guide for beginners:
|
||
|
<A HREF="http://www.csie.ntu.edu.tw/~cjlin/papers/guide/guide.pdf">
|
||
|
A practical guide to support vector
|
||
|
classification
|
||
|
</A>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f410"><b>Q: My data are unbalanced. Could libsvm handle such problems?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Yes, there is a -wi options. For example, if you use
|
||
|
<pre>
|
||
|
> svm-train -s 0 -c 10 -w1 1 -w-1 5 data_file
|
||
|
</pre>
|
||
|
<p>
|
||
|
the penalty for class "-1" is larger.
|
||
|
Note that this -w option is for C-SVC only.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f411"><b>Q: What is the difference between nu-SVC and C-SVC?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Basically they are the same thing but with different
|
||
|
parameters. The range of C is from zero to infinity
|
||
|
but nu is always between [0,1]. A nice property
|
||
|
of nu is that it is related to the ratio of
|
||
|
support vectors and the ratio of the training
|
||
|
error.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f412"><b>Q: The program keeps running (without showing any output). What should I do?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
You may want to check your data. Each training/testing
|
||
|
data must be in one line. It cannot be separated.
|
||
|
In addition, you have to remove empty lines.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f413"><b>Q: The program keeps running (with output, i.e. many dots). What should I do?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
In theory libsvm guarantees to converge.
|
||
|
Therefore, this means you are
|
||
|
handling ill-conditioned situations
|
||
|
(e.g. too large/small parameters) so numerical
|
||
|
difficulties occur.
|
||
|
<p>
|
||
|
You may get better numerical stability by replacing
|
||
|
<pre>
|
||
|
typedef float Qfloat;
|
||
|
</pre>
|
||
|
in svm.cpp with
|
||
|
<pre>
|
||
|
typedef double Qfloat;
|
||
|
</pre>
|
||
|
That is, elements in the kernel cache are stored
|
||
|
in double instead of single. However, this means fewer elements
|
||
|
can be put in the kernel cache.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f414"><b>Q: The training time is too long. What should I do?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
For large problems, please specify enough cache size (i.e.,
|
||
|
-m).
|
||
|
Slow convergence may happen for some difficult cases (e.g. -c is large).
|
||
|
You can try to use a looser stopping tolerance with -e.
|
||
|
If that still doesn't work, you may train only a subset of the data.
|
||
|
You can use the program subset.py in the directory "tools"
|
||
|
to obtain a random subset.
|
||
|
|
||
|
<p>
|
||
|
If you have extremely large data and face this difficulty, please
|
||
|
contact us. We will be happy to discuss possible solutions.
|
||
|
|
||
|
<p> When using large -e, you may want to check if -h 0 (no shrinking) or -h 1 (shrinking) is faster.
|
||
|
See a related question below.
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f4141"><b>Q: Does shrinking always help?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
If the number of iterations is high, then shrinking
|
||
|
often helps.
|
||
|
However, if the number of iterations is small
|
||
|
(e.g., you specify a large -e), then
|
||
|
probably using -h 0 (no shrinking) is better.
|
||
|
See the
|
||
|
<a href=../papers/libsvm.pdf>implementation document</a> for details.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f415"><b>Q: How do I get the decision value(s)?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
We print out decision values for regression. For classification,
|
||
|
we solve several binary SVMs for multi-class cases. You
|
||
|
can obtain values by easily calling the subroutine
|
||
|
svm_predict_values. Their corresponding labels
|
||
|
can be obtained from svm_get_labels.
|
||
|
Details are in
|
||
|
README of libsvm package.
|
||
|
|
||
|
<p>
|
||
|
If you are using MATLAB/OCTAVE interface, svmpredict can directly
|
||
|
give you decision values. Please see matlab/README for details.
|
||
|
|
||
|
<p>
|
||
|
We do not recommend the following. But if you would
|
||
|
like to get values for
|
||
|
TWO-class classification with labels +1 and -1
|
||
|
(note: +1 and -1 but not things like 5 and 10)
|
||
|
in the easiest way, simply add
|
||
|
<pre>
|
||
|
printf("%f\n", dec_values[0]*model->label[0]);
|
||
|
</pre>
|
||
|
after the line
|
||
|
<pre>
|
||
|
svm_predict_values(model, x, dec_values);
|
||
|
</pre>
|
||
|
of the file svm.cpp.
|
||
|
Positive (negative)
|
||
|
decision values correspond to data predicted as +1 (-1).
|
||
|
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f4151"><b>Q: How do I get the distance between a point and the hyperplane?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
The distance is |decision_value| / |w|.
|
||
|
We have |w|^2 = w^Tw = alpha^T Q alpha = 2*(dual_obj + sum alpha_i).
|
||
|
Thus in svm.cpp please find the place
|
||
|
where we calculate the dual objective value
|
||
|
(i.e., the subroutine Solve())
|
||
|
and add a statement to print w^Tw.
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f416"><b>Q: On 32-bit machines, if I use a large cache (i.e. large -m) on a linux machine, why sometimes I get "segmentation fault ?"</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
On 32-bit machines, the maximum addressable
|
||
|
memory is 4GB. The Linux kernel uses 3:1
|
||
|
split which means user space is 3G and
|
||
|
kernel space is 1G. Although there are
|
||
|
3G user space, the maximum dynamic allocation
|
||
|
memory is 2G. So, if you specify -m near 2G,
|
||
|
the memory will be exhausted. And svm-train
|
||
|
will fail when it asks more memory.
|
||
|
For more details, please read
|
||
|
<a href=http://groups.google.com/groups?hl=en&lr=&ie=UTF-8&selm=3BA164F6.BAFA4FB%40daimi.au.dk>
|
||
|
this article</a>.
|
||
|
<p>
|
||
|
The easiest solution is to switch to a
|
||
|
64-bit machine.
|
||
|
Otherwise, there are two ways to solve this. If your
|
||
|
machine supports Intel's PAE (Physical Address
|
||
|
Extension), you can turn on the option HIGHMEM64G
|
||
|
in Linux kernel which uses 4G:4G split for
|
||
|
kernel and user space. If you don't, you can
|
||
|
try a software `tub' which can eliminate the 2G
|
||
|
boundary for dynamic allocated memory. The `tub'
|
||
|
is available at
|
||
|
<a href=http://www.bitwagon.com/tub.html>http://www.bitwagon.com/tub.html</a>.
|
||
|
|
||
|
|
||
|
<!--
|
||
|
|
||
|
This may happen only when the cache is large, but each cached row is
|
||
|
not large enough. <b>Note:</b> This problem is specific to
|
||
|
gnu C library which is used in linux.
|
||
|
The solution is as follows:
|
||
|
|
||
|
<p>
|
||
|
In our program we have malloc() which uses two methods
|
||
|
to allocate memory from kernel. One is
|
||
|
sbrk() and another is mmap(). sbrk is faster, but mmap
|
||
|
has a larger address
|
||
|
space. So malloc uses mmap only if the wanted memory size is larger
|
||
|
than some threshold (default 128k).
|
||
|
In the case where each row is not large enough (#elements < 128k/sizeof(float)) but we need a large cache ,
|
||
|
the address space for sbrk can be exhausted. The solution is to
|
||
|
lower the threshold to force malloc to use mmap
|
||
|
and increase the maximum number of chunks to allocate
|
||
|
with mmap.
|
||
|
|
||
|
<p>
|
||
|
Therefore, in the main program (i.e. svm-train.c) you want
|
||
|
to have
|
||
|
<pre>
|
||
|
#include <malloc.h>
|
||
|
</pre>
|
||
|
and then in main():
|
||
|
<pre>
|
||
|
mallopt(M_MMAP_THRESHOLD, 32768);
|
||
|
mallopt(M_MMAP_MAX,1000000);
|
||
|
</pre>
|
||
|
You can also set the environment variables instead
|
||
|
of writing them in the program:
|
||
|
<pre>
|
||
|
$ M_MMAP_MAX=1000000 M_MMAP_THRESHOLD=32768 ./svm-train .....
|
||
|
</pre>
|
||
|
More information can be found by
|
||
|
<pre>
|
||
|
$ info libc "Malloc Tunable Parameters"
|
||
|
</pre>
|
||
|
-->
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f417"><b>Q: How do I disable screen output of svm-train?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
For commend-line users, use the -q option:
|
||
|
<pre>
|
||
|
> ./svm-train -q heart_scale
|
||
|
</pre>
|
||
|
<p>
|
||
|
For library users, set the global variable
|
||
|
<pre>
|
||
|
extern void (*svm_print_string) (const char *);
|
||
|
</pre>
|
||
|
to specify the output format. You can disable the output by the following steps:
|
||
|
<ol>
|
||
|
<li>
|
||
|
Declare a function to output nothing:
|
||
|
<pre>
|
||
|
void print_null(const char *s) {}
|
||
|
</pre>
|
||
|
</li>
|
||
|
<li>
|
||
|
Assign the output function of libsvm by
|
||
|
<pre>
|
||
|
svm_print_string = &print_null;
|
||
|
</pre>
|
||
|
</li>
|
||
|
</ol>
|
||
|
Finally, a way used in earlier libsvm
|
||
|
is by updating svm.cpp from
|
||
|
<pre>
|
||
|
#if 1
|
||
|
void info(const char *fmt,...)
|
||
|
</pre>
|
||
|
to
|
||
|
<pre>
|
||
|
#if 0
|
||
|
void info(const char *fmt,...)
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f418"><b>Q: I would like to use my own kernel. Any example? In svm.cpp, there are two subroutines for kernel evaluations: k_function() and kernel_function(). Which one should I modify ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
An example is "LIBSVM for string data" in LIBSVM Tools.
|
||
|
<p>
|
||
|
The reason why we have two functions is as follows.
|
||
|
For the RBF kernel exp(-g |xi - xj|^2), if we calculate
|
||
|
xi - xj first and then the norm square, there are 3n operations.
|
||
|
Thus we consider exp(-g (|xi|^2 - 2dot(xi,xj) +|xj|^2))
|
||
|
and by calculating all |xi|^2 in the beginning,
|
||
|
the number of operations is reduced to 2n.
|
||
|
This is for the training. For prediction we cannot
|
||
|
do this so a regular subroutine using that 3n operations is
|
||
|
needed.
|
||
|
|
||
|
The easiest way to have your own kernel is
|
||
|
to put the same code in these two
|
||
|
subroutines by replacing any kernel.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f419"><b>Q: What method does libsvm use for multi-class SVM ? Why don't you use the "1-against-the rest" method?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
It is one-against-one. We chose it after doing the following
|
||
|
comparison:
|
||
|
C.-W. Hsu and C.-J. Lin.
|
||
|
<A HREF="http://www.csie.ntu.edu.tw/~cjlin/papers/multisvm.pdf">
|
||
|
A comparison of methods
|
||
|
for multi-class support vector machines
|
||
|
</A>,
|
||
|
<I>IEEE Transactions on Neural Networks</A></I>, 13(2002), 415-425.
|
||
|
|
||
|
<p>
|
||
|
"1-against-the rest" is a good method whose performance
|
||
|
is comparable to "1-against-1." We do the latter
|
||
|
simply because its training time is shorter.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f422"><b>Q: I would like to solve L2-loss SVM (i.e., error term is quadratic). How should I modify the code ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
It is extremely easy. Taking c-svc for example, to solve
|
||
|
<p>
|
||
|
min_w w^Tw/2 + C \sum max(0, 1- (y_i w^Tx_i+b))^2,
|
||
|
<p>
|
||
|
only two
|
||
|
places of svm.cpp have to be changed.
|
||
|
First, modify the following line of
|
||
|
solve_c_svc from
|
||
|
<pre>
|
||
|
s.Solve(l, SVC_Q(*prob,*param,y), minus_ones, y,
|
||
|
alpha, Cp, Cn, param->eps, si, param->shrinking);
|
||
|
</pre>
|
||
|
to
|
||
|
<pre>
|
||
|
s.Solve(l, SVC_Q(*prob,*param,y), minus_ones, y,
|
||
|
alpha, INF, INF, param->eps, si, param->shrinking);
|
||
|
</pre>
|
||
|
Second, in the class of SVC_Q, declare C as
|
||
|
a private variable:
|
||
|
<pre>
|
||
|
double C;
|
||
|
</pre>
|
||
|
In the constructor replace
|
||
|
<pre>
|
||
|
for(int i=0;i<prob.l;i++)
|
||
|
QD[i]= (Qfloat)(this->*kernel_function)(i,i);
|
||
|
</pre>
|
||
|
with
|
||
|
<pre>
|
||
|
this->C = param.C;
|
||
|
for(int i=0;i<prob.l;i++)
|
||
|
QD[i]= (Qfloat)(this->*kernel_function)(i,i)+0.5/C;
|
||
|
</pre>
|
||
|
Then in the subroutine get_Q, after the for loop, add
|
||
|
<pre>
|
||
|
if(i >= start && i < len)
|
||
|
data[i] += 0.5/C;
|
||
|
</pre>
|
||
|
|
||
|
<p>
|
||
|
For one-class svm, the modification is exactly the same. For SVR, you don't need an if statement like the above. Instead, you only need a simple assignment:
|
||
|
<pre>
|
||
|
data[real_i] += 0.5/C;
|
||
|
</pre>
|
||
|
|
||
|
|
||
|
<p>
|
||
|
For large linear L2-loss SVM, please use
|
||
|
<a href=../liblinear>LIBLINEAR</a>.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f425"><b>Q: In one-class SVM, parameter nu should be an upper bound of the training error rate. Why sometimes I get a training error rate bigger than nu?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
At optimum, some training instances should satisfy
|
||
|
w^Tx - rho = 0. However, numerically they may be slightly
|
||
|
smaller than zero
|
||
|
Then they are wrongly counted
|
||
|
as training errors. You can use a smaller stopping tolerance
|
||
|
(by the -e option) to make this problem less serious.
|
||
|
|
||
|
<p>
|
||
|
This issue <b>does not occur</b> for nu-SVC for
|
||
|
two-class classification.
|
||
|
We have that
|
||
|
<ol>
|
||
|
<li>nu is an upper bound on the ratio of training points
|
||
|
on the wrong side of the hyperplane, and
|
||
|
<li>therefore, nu is also an upper bound on the training error rate.
|
||
|
</ol>
|
||
|
Numerical issues occur in calculating the first case
|
||
|
because some training points satisfying y(w^Tx + b) - rho = 0
|
||
|
become negative.
|
||
|
However, we have no numerical problems for the second case because
|
||
|
we compare y(w^Tx + b) and 0 for counting training errors.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f427"><b>Q: Why the code gives NaN (not a number) results?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
This rarely happens, but few users reported the problem.
|
||
|
It seems that their
|
||
|
computers for training libsvm have the VPN client
|
||
|
running. The VPN software has some bugs and causes this
|
||
|
problem. Please try to close or disconnect the VPN client.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f430"><b>Q: Why the sign of predicted labels and decision values are sometimes reversed?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
This situation may occur <b>before version 3.17</b>.
|
||
|
Nothing is wrong. Very likely you have two labels +1/-1 and the first instance in your data
|
||
|
has -1. We give the following explanation.
|
||
|
|
||
|
<p>
|
||
|
Internally class labels are ordered by their first occurrence in the training set. For a k-class data, internally labels
|
||
|
are 0, ..., k-1, and each two-class SVM considers pair
|
||
|
(i, j) with i < j. Then class i is treated as positive (+1)
|
||
|
and j as negative (-1).
|
||
|
For example, if the data set has labels +5/+10 and +10 appears
|
||
|
first, then internally the +5 versus +10 SVM problem
|
||
|
has +10 as positive (+1) and +5 as negative (-1).
|
||
|
|
||
|
<p>
|
||
|
By this setting, if you have labels +1 and -1,
|
||
|
it's possible that internally they correspond to -1 and +1,
|
||
|
respectively. Some new users have been confused about
|
||
|
this, so <b>after version 3.17</b>, if the data set has only
|
||
|
two labels +1 and -1,
|
||
|
internally we ensure +1 to be before -1. Then class +1
|
||
|
is always treated as positive in the SVM problem.
|
||
|
Note that this is for <b>two-class data only.</b>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f431"><b>Q: I don't know class labels of test data. What should I put in the first column of the test file?</b></a>
|
||
|
<br/>
|
||
|
<p>Any value is ok. In this situation, what you will use is the output file of svm-predict, which gives predicted class labels.
|
||
|
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f432"><b>Q: How can I use OpenMP to parallelize LIBSVM on a multicore/shared-memory computer?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>It is very easy if you are using GCC 4.2
|
||
|
or after.
|
||
|
|
||
|
<p> In Makefile, add -fopenmp to CFLAGS.
|
||
|
|
||
|
<p> In class SVC_Q of svm.cpp, modify the for loop
|
||
|
of get_Q to:
|
||
|
<pre>
|
||
|
#pragma omp parallel for private(j)
|
||
|
for(j=start;j<len;j++)
|
||
|
</pre>
|
||
|
<p> In the subroutine svm_predict_values of svm.cpp, add one line to the for loop:
|
||
|
<pre>
|
||
|
#pragma omp parallel for private(i)
|
||
|
for(i=0;i<l;i++)
|
||
|
kvalue[i] = Kernel::k_function(x,model->SV[i],model->param);
|
||
|
</pre>
|
||
|
For regression, you need to modify
|
||
|
class SVR_Q instead. The loop in svm_predict_values
|
||
|
is also different because you need
|
||
|
a reduction clause for the variable sum:
|
||
|
<pre>
|
||
|
#pragma omp parallel for private(i) reduction(+:sum)
|
||
|
for(i=0;i<model->l;i++)
|
||
|
sum += sv_coef[i] * Kernel::k_function(x,model->SV[i],model->param);
|
||
|
</pre>
|
||
|
|
||
|
<p> Then rebuild the package. Kernel evaluations in training/testing will be parallelized. An example of running this modification on
|
||
|
an 8-core machine using the data set
|
||
|
<a href=../libsvmtools/datasets/binary/ijcnn1.bz2>ijcnn1</a>:
|
||
|
|
||
|
<p> 8 cores:
|
||
|
<pre>
|
||
|
%setenv OMP_NUM_THREADS 8
|
||
|
%time svm-train -c 16 -g 4 -m 400 ijcnn1
|
||
|
27.1sec
|
||
|
</pre>
|
||
|
1 core:
|
||
|
<pre>
|
||
|
%setenv OMP_NUM_THREADS 1
|
||
|
%time svm-train -c 16 -g 4 -m 400 ijcnn1
|
||
|
79.8sec
|
||
|
</pre>
|
||
|
For this data, kernel evaluations take 80% of training time. In the above example, we assume you use csh. For bash, use
|
||
|
<pre>
|
||
|
export OMP_NUM_THREADS=8
|
||
|
</pre>
|
||
|
instead.
|
||
|
|
||
|
<p> For Python interface, you need to add the -lgomp link option:
|
||
|
<pre>
|
||
|
$(CXX) -lgomp -shared -dynamiclib svm.o -o libsvm.so.$(SHVER)
|
||
|
</pre>
|
||
|
|
||
|
<p> For MS Windows, you need to add /openmp in CFLAGS of Makefile.win
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f433"><b>Q: How could I know which training instances are support vectors?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
It's very simple. Since version 3.13, you can use the function
|
||
|
<pre>
|
||
|
void svm_get_sv_indices(const struct svm_model *model, int *sv_indices)
|
||
|
</pre>
|
||
|
to get indices of support vectors. For example, in svm-train.c, after
|
||
|
<pre>
|
||
|
model = svm_train(&prob, &param);
|
||
|
</pre>
|
||
|
you can add
|
||
|
<pre>
|
||
|
int nr_sv = svm_get_nr_sv(model);
|
||
|
int *sv_indices = Malloc(int, nr_sv);
|
||
|
svm_get_sv_indices(model, sv_indices);
|
||
|
for (int i=0; i<nr_sv; i++)
|
||
|
printf("instance %d is a support vector\n", sv_indices[i]);
|
||
|
</pre>
|
||
|
|
||
|
<p> If you use matlab interface, you can directly check
|
||
|
<pre>
|
||
|
model.sv_indices
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q04:_Training_and_prediction"></a>
|
||
|
<a name="f434"><b>Q: Why sv_indices (indices of support vectors) are not stored in the saved model file?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
Although sv_indices is a member of the model structure
|
||
|
to
|
||
|
indicate support vectors in the training set,
|
||
|
we do not store its contents in the model file.
|
||
|
The model file is mainly used in the future for
|
||
|
prediction, so it is basically <b>independent</b>
|
||
|
from training data. Thus
|
||
|
storing sv_indices is not necessary.
|
||
|
Users should find support vectors right after
|
||
|
the training process. See the previous FAQ.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f501"><b>Q: After doing cross validation, why there is no model file outputted ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Cross validation is used for selecting good parameters.
|
||
|
After finding them, you want to re-train the whole
|
||
|
data without the -v option.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f502"><b>Q: Why my cross-validation results are different from those in the Practical Guide?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
Due to random partitions of
|
||
|
the data, on different systems CV accuracy values
|
||
|
may be different.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f503"><b>Q: On some systems CV accuracy is the same in several runs. How could I use different data partitions? In other words, how do I set random seed in LIBSVM?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
If you use GNU C library,
|
||
|
the default seed 1 is considered. Thus you always
|
||
|
get the same result of running svm-train -v.
|
||
|
To have different seeds, you can add the following code
|
||
|
in svm-train.c:
|
||
|
<pre>
|
||
|
#include <time.h>
|
||
|
</pre>
|
||
|
and in the beginning of main(),
|
||
|
<pre>
|
||
|
srand(time(0));
|
||
|
</pre>
|
||
|
Alternatively, if you are not using GNU C library
|
||
|
and would like to use a fixed seed, you can have
|
||
|
<pre>
|
||
|
srand(1);
|
||
|
</pre>
|
||
|
|
||
|
<p>
|
||
|
For Java, the random number generator
|
||
|
is initialized using the time information.
|
||
|
So results of two CV runs are different.
|
||
|
To fix the seed, after version 3.1 (released
|
||
|
in mid 2011), you can add
|
||
|
<pre>
|
||
|
svm.rand.setSeed(0);
|
||
|
</pre>
|
||
|
in the main() function of svm_train.java.
|
||
|
|
||
|
<p>
|
||
|
If you use CV to select parameters, it is recommended to use identical folds
|
||
|
under different parameters. In this case, you can consider fixing the seed.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f504"><b>Q: Why on windows sometimes grid.py fails?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
This problem shouldn't happen after version
|
||
|
2.85. If you are using earlier versions,
|
||
|
please download the latest one.
|
||
|
|
||
|
<!--
|
||
|
<p>
|
||
|
If you are using earlier
|
||
|
versions, the error message is probably
|
||
|
<pre>
|
||
|
Traceback (most recent call last):
|
||
|
File "grid.py", line 349, in ?
|
||
|
main()
|
||
|
File "grid.py", line 344, in main
|
||
|
redraw(db)
|
||
|
File "grid.py", line 132, in redraw
|
||
|
gnuplot.write("set term windows\n")
|
||
|
IOError: [Errno 22] Invalid argument
|
||
|
</pre>
|
||
|
|
||
|
<p>Please try to close gnuplot windows and rerun.
|
||
|
If the problem still occurs, comment the following
|
||
|
two lines in grid.py by inserting "#" in the beginning:
|
||
|
<pre>
|
||
|
redraw(db)
|
||
|
redraw(db,1)
|
||
|
</pre>
|
||
|
Then you get accuracy only but not cross validation contours.
|
||
|
-->
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f505"><b>Q: Why grid.py/easy.py sometimes generates the following warning message?</b></a>
|
||
|
<br/>
|
||
|
<pre>
|
||
|
Warning: empty z range [62.5:62.5], adjusting to [61.875:63.125]
|
||
|
Notice: cannot contour non grid data!
|
||
|
</pre>
|
||
|
<p>Nothing is wrong and please disregard the
|
||
|
message. It is from gnuplot when drawing
|
||
|
the contour.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f506"><b>Q: How do I choose the kernel?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
In general we suggest you to try the RBF kernel first.
|
||
|
A recent result by Keerthi and Lin
|
||
|
(<a href=http://www.csie.ntu.edu.tw/~cjlin/papers/limit.pdf>
|
||
|
download paper here</a>)
|
||
|
shows that if RBF is used with model selection,
|
||
|
then there is no need to consider the linear kernel.
|
||
|
The kernel matrix using sigmoid may not be positive definite
|
||
|
and in general it's accuracy is not better than RBF.
|
||
|
(see the paper by Lin and Lin
|
||
|
(<a href=http://www.csie.ntu.edu.tw/~cjlin/papers/tanh.pdf>
|
||
|
download paper here</a>).
|
||
|
Polynomial kernels are ok but if a high degree is used,
|
||
|
numerical difficulties tend to happen
|
||
|
(thinking about dth power of (<1) goes to 0
|
||
|
and (>1) goes to infinity).
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f507"><b>Q: How does LIBSVM perform parameter selection for multi-class problems? </b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
LIBSVM implements "one-against-one" multi-class method, so there are
|
||
|
k(k-1)/2 binary models, where k is the number of classes.
|
||
|
|
||
|
<p>
|
||
|
We can consider two ways to conduct parameter selection.
|
||
|
|
||
|
<ol>
|
||
|
<li>
|
||
|
For any two classes of data, a parameter selection procedure is conducted. Finally,
|
||
|
each decision function has its own optimal parameters.
|
||
|
</li>
|
||
|
<li>
|
||
|
The same parameters are used for all k(k-1)/2 binary classification problems.
|
||
|
We select parameters that achieve the highest overall performance.
|
||
|
</li>
|
||
|
</ol>
|
||
|
|
||
|
Each has its own advantages. A
|
||
|
single parameter set may not be uniformly good for all k(k-1)/2 decision functions.
|
||
|
However, as the overall accuracy is the final consideration, one parameter set
|
||
|
for one decision function may lead to over-fitting. In the paper
|
||
|
<p>
|
||
|
Chen, Lin, and Schölkopf,
|
||
|
<A HREF="../papers/nusvmtutorial.pdf">
|
||
|
A tutorial on nu-support vector machines.
|
||
|
</A>
|
||
|
Applied Stochastic Models in Business and Industry, 21(2005), 111-136,
|
||
|
|
||
|
<p>
|
||
|
they have experimentally
|
||
|
shown that the two methods give similar performance.
|
||
|
Therefore, currently the parameter selection in LIBSVM
|
||
|
takes the second approach by considering the same parameters for
|
||
|
all k(k-1)/2 models.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q05:_Cross_validation_and_parameter_selection"></a>
|
||
|
<a name="f508"><b>Q: How do I choose parameters for one-class SVM as training data are in only one class?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
You have pre-specified true positive rate in mind and then search for
|
||
|
parameters which achieve similar cross-validation accuracy.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q06:_Probability_outputs"></a>
|
||
|
<a name="f425"><b>Q: Why training a probability model (i.e., -b 1) takes a longer time?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
To construct this probability model, we internally conduct a
|
||
|
cross validation, which is more time consuming than
|
||
|
a regular training.
|
||
|
Hence, in general you do parameter selection first without
|
||
|
-b 1. You only use -b 1 when good parameters have been
|
||
|
selected. In other words, you avoid using -b 1 and -v
|
||
|
together.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q06:_Probability_outputs"></a>
|
||
|
<a name="f426"><b>Q: Why using the -b option does not give me better accuracy?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
There is absolutely no reason the probability outputs guarantee
|
||
|
you better accuracy. The main purpose of this option is
|
||
|
to provide you the probability estimates, but not to boost
|
||
|
prediction accuracy. From our experience,
|
||
|
after proper parameter selections, in general with
|
||
|
and without -b have similar accuracy. Occasionally there
|
||
|
are some differences.
|
||
|
It is not recommended to compare the two under
|
||
|
just a fixed parameter
|
||
|
set as more differences will be observed.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q06:_Probability_outputs"></a>
|
||
|
<a name="f427"><b>Q: Why using svm-predict -b 0 and -b 1 gives different accuracy values?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Let's just consider two-class classification here. After probability information is obtained in training,
|
||
|
we do not have
|
||
|
<p>
|
||
|
prob > = 0.5 if and only if decision value >= 0.
|
||
|
<p>
|
||
|
So predictions may be different with -b 0 and 1.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q07:_Graphic_interface"></a>
|
||
|
<a name="f501"><b>Q: How can I save images drawn by svm-toy?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
For Microsoft windows, first press the "print screen" key on the keyboard.
|
||
|
Open "Microsoft Paint"
|
||
|
(included in Windows)
|
||
|
and press "ctrl-v." Then you can clip
|
||
|
the part of picture which you want.
|
||
|
For X windows, you can
|
||
|
use the program "xv" or "import" to grab the picture of the svm-toy window.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q07:_Graphic_interface"></a>
|
||
|
<a name="f502"><b>Q: I press the "load" button to load data points but why svm-toy does not draw them ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
The program svm-toy assumes both attributes (i.e. x-axis and y-axis
|
||
|
values) are in (0,1). Hence you want to scale your
|
||
|
data to between a small positive number and
|
||
|
a number less than but very close to 1.
|
||
|
Moreover, class labels must be 1, 2, or 3
|
||
|
(not 1.0, 2.0 or anything else).
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q07:_Graphic_interface"></a>
|
||
|
<a name="f503"><b>Q: I would like svm-toy to handle more than three classes of data, what should I do ?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Taking windows/svm-toy.cpp as an example, you need to
|
||
|
modify it and the difference
|
||
|
from the original file is as the following: (for five classes of
|
||
|
data)
|
||
|
<pre>
|
||
|
30,32c30
|
||
|
< RGB(200,0,200),
|
||
|
< RGB(0,160,0),
|
||
|
< RGB(160,0,0)
|
||
|
---
|
||
|
> RGB(200,0,200)
|
||
|
39c37
|
||
|
< HBRUSH brush1, brush2, brush3, brush4, brush5;
|
||
|
---
|
||
|
> HBRUSH brush1, brush2, brush3;
|
||
|
113,114d110
|
||
|
< brush4 = CreateSolidBrush(colors[7]);
|
||
|
< brush5 = CreateSolidBrush(colors[8]);
|
||
|
155,157c151
|
||
|
< else if(v==3) return brush3;
|
||
|
< else if(v==4) return brush4;
|
||
|
< else return brush5;
|
||
|
---
|
||
|
> else return brush3;
|
||
|
325d318
|
||
|
< int colornum = 5;
|
||
|
327c320
|
||
|
< svm_node *x_space = new svm_node[colornum * prob.l];
|
||
|
---
|
||
|
> svm_node *x_space = new svm_node[3 * prob.l];
|
||
|
333,338c326,331
|
||
|
< x_space[colornum * i].index = 1;
|
||
|
< x_space[colornum * i].value = q->x;
|
||
|
< x_space[colornum * i + 1].index = 2;
|
||
|
< x_space[colornum * i + 1].value = q->y;
|
||
|
< x_space[colornum * i + 2].index = -1;
|
||
|
< prob.x[i] = &x_space[colornum * i];
|
||
|
---
|
||
|
> x_space[3 * i].index = 1;
|
||
|
> x_space[3 * i].value = q->x;
|
||
|
> x_space[3 * i + 1].index = 2;
|
||
|
> x_space[3 * i + 1].value = q->y;
|
||
|
> x_space[3 * i + 2].index = -1;
|
||
|
> prob.x[i] = &x_space[3 * i];
|
||
|
397c390
|
||
|
< if(current_value > 5) current_value = 1;
|
||
|
---
|
||
|
> if(current_value > 3) current_value = 1;
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q08:_Java_version_of_libsvm"></a>
|
||
|
<a name="f601"><b>Q: What is the difference between Java version and C++ version of libsvm?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
They are the same thing. We just rewrote the C++ code
|
||
|
in Java.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q08:_Java_version_of_libsvm"></a>
|
||
|
<a name="f602"><b>Q: Is the Java version significantly slower than the C++ version?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
This depends on the VM you used. We have seen good
|
||
|
VM which leads the Java version to be quite competitive with
|
||
|
the C++ code. (though still slower)
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q08:_Java_version_of_libsvm"></a>
|
||
|
<a name="f603"><b>Q: While training I get the following error message: java.lang.OutOfMemoryError. What is wrong?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
You should try to increase the maximum Java heap size.
|
||
|
For example,
|
||
|
<pre>
|
||
|
java -Xmx2048m -classpath libsvm.jar svm_train ...
|
||
|
</pre>
|
||
|
sets the maximum heap size to 2048M.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q08:_Java_version_of_libsvm"></a>
|
||
|
<a name="f604"><b>Q: Why you have the main source file svm.m4 and then transform it to svm.java?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Unlike C, Java does not have a preprocessor built-in.
|
||
|
However, we need some macros (see first 3 lines of svm.m4).
|
||
|
|
||
|
</ul>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q09:_Python_interface"></a>
|
||
|
<a name="f704"><b>Q: Except the python-C++ interface provided, could I use Jython to call libsvm ?</b></a>
|
||
|
<br/>
|
||
|
<p> Yes, here are some examples:
|
||
|
|
||
|
<pre>
|
||
|
$ export CLASSPATH=$CLASSPATH:~/libsvm-2.91/java/libsvm.jar
|
||
|
$ ./jython
|
||
|
Jython 2.1a3 on java1.3.0 (JIT: jitc)
|
||
|
Type "copyright", "credits" or "license" for more information.
|
||
|
>>> from libsvm import *
|
||
|
>>> dir()
|
||
|
['__doc__', '__name__', 'svm', 'svm_model', 'svm_node', 'svm_parameter',
|
||
|
'svm_problem']
|
||
|
>>> x1 = [svm_node(index=1,value=1)]
|
||
|
>>> x2 = [svm_node(index=1,value=-1)]
|
||
|
>>> param = svm_parameter(svm_type=0,kernel_type=2,gamma=1,cache_size=40,eps=0.001,C=1,nr_weight=0,shrinking=1)
|
||
|
>>> prob = svm_problem(l=2,y=[1,-1],x=[x1,x2])
|
||
|
>>> model = svm.svm_train(prob,param)
|
||
|
*
|
||
|
optimization finished, #iter = 1
|
||
|
nu = 1.0
|
||
|
obj = -1.018315639346838, rho = 0.0
|
||
|
nSV = 2, nBSV = 2
|
||
|
Total nSV = 2
|
||
|
>>> svm.svm_predict(model,x1)
|
||
|
1.0
|
||
|
>>> svm.svm_predict(model,x2)
|
||
|
-1.0
|
||
|
>>> svm.svm_save_model("test.model",model)
|
||
|
|
||
|
</pre>
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f801"><b>Q: I compile the MATLAB interface without problem, but why errors occur while running it?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Your compiler version may not be supported/compatible for MATLAB.
|
||
|
Please check <a href=http://www.mathworks.com/support/compilers/current_release>this MATLAB page</a> first and then specify the version
|
||
|
number. For example, if g++ X.Y is supported, replace
|
||
|
<pre>
|
||
|
CXX = g++
|
||
|
</pre>
|
||
|
in the Makefile with
|
||
|
<pre>
|
||
|
CXX = g++-X.Y
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f8011"><b>Q: On 64bit Windows I compile the MATLAB interface without problem, but why errors occur while running it?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
|
||
|
Please make sure that you use
|
||
|
the -largeArrayDims option in make.m. For example,
|
||
|
<pre>
|
||
|
mex -largeArrayDims -O -c svm.cpp
|
||
|
</pre>
|
||
|
|
||
|
Moreover, if you use Microsoft Visual Studio,
|
||
|
probabally it is not properly installed.
|
||
|
See the explanation
|
||
|
<a href=http://www.mathworks.com/support/compilers/current_release/win64.html#n7>here</a>.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f802"><b>Q: Does the MATLAB interface provide a function to do scaling?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
It is extremely easy to do scaling under MATLAB.
|
||
|
The following one-line code scale each feature to the range
|
||
|
of [0,1]:
|
||
|
<pre>
|
||
|
(data - repmat(min(data,[],1),size(data,1),1))*spdiags(1./(max(data,[],1)-min(data,[],1))',0,size(data,2),size(data,2))
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f803"><b>Q: How could I use MATLAB interface for parameter selection?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
One can do this by a simple loop.
|
||
|
See the following example:
|
||
|
<pre>
|
||
|
bestcv = 0;
|
||
|
for log2c = -1:3,
|
||
|
for log2g = -4:1,
|
||
|
cmd = ['-v 5 -c ', num2str(2^log2c), ' -g ', num2str(2^log2g)];
|
||
|
cv = svmtrain(heart_scale_label, heart_scale_inst, cmd);
|
||
|
if (cv >= bestcv),
|
||
|
bestcv = cv; bestc = 2^log2c; bestg = 2^log2g;
|
||
|
end
|
||
|
fprintf('%g %g %g (best c=%g, g=%g, rate=%g)\n', log2c, log2g, cv, bestc, bestg, bestcv);
|
||
|
end
|
||
|
end
|
||
|
</pre>
|
||
|
You may adjust the parameter range in the above loops.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f8031"><b>Q: I use MATLAB parallel programming toolbox on a multi-core environment for parameter selection. Why the program is even slower?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Fabrizio Lacalandra of University of Pisa reported this issue.
|
||
|
It seems the problem is caused by the screen output.
|
||
|
If you disable the <b>info</b> function
|
||
|
using <pre>#if 0,</pre> then the problem
|
||
|
may be solved.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f8032"><b>Q: How do I use LIBSVM with OpenMP under MATLAB?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
In Makefile,
|
||
|
you need to add -fopenmp to CFLAGS and -lgomp to MEX_OPTION. For Octave, you need the same modification.
|
||
|
|
||
|
<p> However, a minor problem is that
|
||
|
the number of threads cannot
|
||
|
be specified in MATLAB. We tried Version 7.12 (R2011a) and gcc-4.6.1.
|
||
|
|
||
|
<pre>
|
||
|
% export OMP_NUM_THREADS=4; matlab
|
||
|
>> setenv('OMP_NUM_THREADS', '1');
|
||
|
</pre>
|
||
|
|
||
|
Then OMP_NUM_THREADS is still 4 while running the program. Please contact us if you
|
||
|
see how to solve this problem. You can, however,
|
||
|
specify the number in the source code (thanks
|
||
|
to comments from Ricardo Santiago-mozos):
|
||
|
<pre>
|
||
|
#pragma omp parallel for private(i) num_threads(4)
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f804"><b>Q: How could I generate the primal variable w of linear SVM?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Let's start from the binary class and
|
||
|
assume you have two labels -1 and +1.
|
||
|
After obtaining the model from calling svmtrain,
|
||
|
do the following to have w and b:
|
||
|
<pre>
|
||
|
w = model.SVs' * model.sv_coef;
|
||
|
b = -model.rho;
|
||
|
|
||
|
if model.Label(1) == -1
|
||
|
w = -w;
|
||
|
b = -b;
|
||
|
end
|
||
|
</pre>
|
||
|
If you do regression or one-class SVM, then the if statement is not needed.
|
||
|
|
||
|
<p> For multi-class SVM, we illustrate the setting
|
||
|
in the following example of running the iris
|
||
|
data, which have 3 classes
|
||
|
<pre>
|
||
|
> [y, x] = libsvmread('../../htdocs/libsvmtools/datasets/multiclass/iris.scale');
|
||
|
> m = svmtrain(y, x, '-t 0')
|
||
|
|
||
|
m =
|
||
|
|
||
|
Parameters: [5x1 double]
|
||
|
nr_class: 3
|
||
|
totalSV: 42
|
||
|
rho: [3x1 double]
|
||
|
Label: [3x1 double]
|
||
|
ProbA: []
|
||
|
ProbB: []
|
||
|
nSV: [3x1 double]
|
||
|
sv_coef: [42x2 double]
|
||
|
SVs: [42x4 double]
|
||
|
</pre>
|
||
|
sv_coef is like:
|
||
|
<pre>
|
||
|
+-+-+--------------------+
|
||
|
|1|1| |
|
||
|
|v|v| SVs from class 1 |
|
||
|
|2|3| |
|
||
|
+-+-+--------------------+
|
||
|
|1|2| |
|
||
|
|v|v| SVs from class 2 |
|
||
|
|2|3| |
|
||
|
+-+-+--------------------+
|
||
|
|1|2| |
|
||
|
|v|v| SVs from class 3 |
|
||
|
|3|3| |
|
||
|
+-+-+--------------------+
|
||
|
</pre>
|
||
|
so we need to see nSV of each classes.
|
||
|
<pre>
|
||
|
> m.nSV
|
||
|
|
||
|
ans =
|
||
|
|
||
|
3
|
||
|
21
|
||
|
18
|
||
|
</pre>
|
||
|
Suppose the goal is to find the vector w of classes
|
||
|
1 vs 3. Then
|
||
|
y_i alpha_i of training 1 vs 3 are
|
||
|
<pre>
|
||
|
> coef = [m.sv_coef(1:3,2); m.sv_coef(25:42,1)];
|
||
|
</pre>
|
||
|
and SVs are:
|
||
|
<pre>
|
||
|
> SVs = [m.SVs(1:3,:); m.SVs(25:42,:)];
|
||
|
</pre>
|
||
|
Hence, w is
|
||
|
<pre>
|
||
|
> w = SVs'*coef;
|
||
|
</pre>
|
||
|
For rho,
|
||
|
<pre>
|
||
|
> m.rho
|
||
|
|
||
|
ans =
|
||
|
|
||
|
1.1465
|
||
|
0.3682
|
||
|
-1.9969
|
||
|
> b = -m.rho(2);
|
||
|
</pre>
|
||
|
because rho is arranged by 1vs2 1vs3 2vs3.
|
||
|
|
||
|
|
||
|
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f805"><b>Q: Is there an OCTAVE interface for libsvm?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
Yes, after libsvm 2.86, the matlab interface
|
||
|
works on OCTAVE as well. Please use make.m by typing
|
||
|
<pre>
|
||
|
>> make
|
||
|
</pre>
|
||
|
under OCTAVE.
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f806"><b>Q: How to handle the name conflict between svmtrain in the libsvm matlab interface and that in MATLAB bioinformatics toolbox?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
The easiest way is to rename the svmtrain binary
|
||
|
file (e.g., svmtrain.mexw32 on 32-bit windows)
|
||
|
to a different
|
||
|
name (e.g., svmtrain2.mexw32).
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f807"><b>Q: On Windows I got an error message "Invalid MEX-file: Specific module not found" when running the pre-built MATLAB interface in the windows sub-directory. What should I do?</b></a>
|
||
|
<br/>
|
||
|
<p>
|
||
|
|
||
|
The error usually happens
|
||
|
when there are missing runtime components
|
||
|
such as MSVCR100.dll on your Windows platform.
|
||
|
You can use tools such as
|
||
|
<a href=http://www.dependencywalker.com/>Dependency
|
||
|
Walker</a> to find missing library files.
|
||
|
|
||
|
<p>
|
||
|
For example, if the pre-built MEX files are compiled by
|
||
|
Visual C++ 2010,
|
||
|
you must have installed
|
||
|
Microsoft Visual C++ Redistributable Package 2010
|
||
|
(vcredist_x86.exe). You can easily find the freely
|
||
|
available file from Microsoft's web site.
|
||
|
|
||
|
<p>
|
||
|
For 64bit Windows, the situation is similar. If
|
||
|
the pre-built files are by
|
||
|
Visual C++ 2008, then you must have
|
||
|
Microsoft Visual C++ Redistributable Package 2008
|
||
|
(vcredist_x64.exe).
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f808"><b>Q: LIBSVM supports 1-vs-1 multi-class classification. If instead I would like to use 1-vs-rest, how to implement it using MATLAB interface?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
Please use code in the following <a href=../libsvmtools/ovr_multiclass>directory</a>. The following example shows how to
|
||
|
train and test the problem dna (<a href=../libsvmtools/datasets/multiclass/dna.scale>training</a> and <a href=../libsvmtools/datasets/multiclass/dna.scale.t>testing</a>).
|
||
|
|
||
|
<p> Load, train and predict data:
|
||
|
<pre>
|
||
|
[trainY trainX] = libsvmread('./dna.scale');
|
||
|
[testY testX] = libsvmread('./dna.scale.t');
|
||
|
model = ovrtrain(trainY, trainX, '-c 8 -g 4');
|
||
|
[pred ac decv] = ovrpredict(testY, testX, model);
|
||
|
fprintf('Accuracy = %g%%\n', ac * 100);
|
||
|
</pre>
|
||
|
Conduct CV on a grid of parameters
|
||
|
<pre>
|
||
|
bestcv = 0;
|
||
|
for log2c = -1:2:3,
|
||
|
for log2g = -4:2:1,
|
||
|
cmd = ['-q -c ', num2str(2^log2c), ' -g ', num2str(2^log2g)];
|
||
|
cv = get_cv_ac(trainY, trainX, cmd, 3);
|
||
|
if (cv >= bestcv),
|
||
|
bestcv = cv; bestc = 2^log2c; bestg = 2^log2g;
|
||
|
end
|
||
|
fprintf('%g %g %g (best c=%g, g=%g, rate=%g)\n', log2c, log2g, cv, bestc, bestg, bestcv);
|
||
|
end
|
||
|
end
|
||
|
</pre>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<a name="/Q10:_MATLAB_interface"></a>
|
||
|
<a name="f809"><b>Q: I tried to install matlab interface on mac, but failed. What should I do?</b></a>
|
||
|
<br/>
|
||
|
|
||
|
<p>
|
||
|
We assume that in a matlab command window you change directory to libsvm/matlab and type
|
||
|
<pre>
|
||
|
>> make
|
||
|
</pre>
|
||
|
We discuss the following situations.
|
||
|
|
||
|
<ol>
|
||
|
<li>An error message like "libsvmread.c:1:19: fatal error:
|
||
|
stdio.h: No such file or directory" appears.
|
||
|
|
||
|
<p>
|
||
|
Reason: "make" looks for a C++ compiler, but
|
||
|
no compiler is found. To get one, you can
|
||
|
<ul>
|
||
|
<li> Install XCode offered by Apple Inc.
|
||
|
<li> Install XCode Command Line Tools.
|
||
|
</ul>
|
||
|
|
||
|
<p>
|
||
|
<li> On OS X with Xcode 4.2+, I got an error message like "llvm-gcc-4.2:
|
||
|
command not found."
|
||
|
|
||
|
<p>
|
||
|
Reason: Since Apple Inc. only ships llsvm-gcc instead of gcc-4.2,
|
||
|
llvm-gcc-4.2 cannot be found.
|
||
|
|
||
|
<p>
|
||
|
If you are using Xcode 4.2-4.6,
|
||
|
a related solution is offered at
|
||
|
<a href=http://www.mathworks.com/matlabcentral/answers/94092>http://www.mathworks.com/matlabcentral/answers/94092</a>.
|
||
|
|
||
|
<p>
|
||
|
On the other hand, for Xcode 5 (including Xcode 4.2-4.6), in a Matlab command window, enter
|
||
|
<ul>
|
||
|
<li> cd (matlabroot)
|
||
|
<li> cd bin
|
||
|
<li> Backup your mexopts.sh first
|
||
|
<li> edit mexopts.sh
|
||
|
<li> Scroll down to "maci64" section. Change
|
||
|
<pre>
|
||
|
CC='llvm-gcc-4.2'
|
||
|
CXX='llvm-g++-4.2'
|
||
|
</pre>
|
||
|
to
|
||
|
<pre>
|
||
|
CC='llvm-gcc'
|
||
|
CXX='llvm-g++'
|
||
|
</pre>
|
||
|
</ul>
|
||
|
|
||
|
Please also ensure that SDKROOT corresponds to the SDK version you are using.
|
||
|
|
||
|
<p>
|
||
|
<li> Other errors: you may check <a href=http://www.mathworks.com/matlabcentral/answers/94092>http://www.mathworks.com/matlabcentral/answers/94092</a>.
|
||
|
|
||
|
</ol>
|
||
|
<p align="right">
|
||
|
<a href="#_TOP">[Go Top]</a>
|
||
|
<hr/>
|
||
|
<p align="middle">
|
||
|
<a href="http://www.csie.ntu.edu.tw/~cjlin/libsvm">LIBSVM home page</a>
|
||
|
</p>
|
||
|
</body>
|
||
|
</html>
|