ACDC_KNOSYS-2021/MSC/libsvm-weights-3.20/matlab/svmpredict.c

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2021-10-04 18:29:54 +08:00
#include <stdio.h>
#include <stdlib.h>
#include <string.h>
#include "../svm.h"
#include "mex.h"
#include "svm_model_matlab.h"
#ifdef MX_API_VER
#if MX_API_VER < 0x07030000
typedef int mwIndex;
#endif
#endif
#define CMD_LEN 2048
int print_null(const char *s,...) {}
int (*info)(const char *fmt,...) = &mexPrintf;
void read_sparse_instance(const mxArray *prhs, int index, struct svm_node *x)
{
int i, j, low, high;
mwIndex *ir, *jc;
double *samples;
ir = mxGetIr(prhs);
jc = mxGetJc(prhs);
samples = mxGetPr(prhs);
// each column is one instance
j = 0;
low = (int)jc[index], high = (int)jc[index+1];
for(i=low;i<high;i++)
{
x[j].index = (int)ir[i] + 1;
x[j].value = samples[i];
j++;
}
x[j].index = -1;
}
static void fake_answer(int nlhs, mxArray *plhs[])
{
int i;
for(i=0;i<nlhs;i++)
plhs[i] = mxCreateDoubleMatrix(0, 0, mxREAL);
}
void predict(int nlhs, mxArray *plhs[], const mxArray *prhs[], struct svm_model *model, const int predict_probability)
{
int label_vector_row_num, label_vector_col_num;
int feature_number, testing_instance_number;
int instance_index;
double *ptr_instance, *ptr_label, *ptr_predict_label;
double *ptr_prob_estimates, *ptr_dec_values, *ptr;
struct svm_node *x;
mxArray *pplhs[1]; // transposed instance sparse matrix
mxArray *tplhs[3]; // temporary storage for plhs[]
int correct = 0;
int total = 0;
double error = 0;
double sump = 0, sumt = 0, sumpp = 0, sumtt = 0, sumpt = 0;
int svm_type=svm_get_svm_type(model);
int nr_class=svm_get_nr_class(model);
double *prob_estimates=NULL;
// prhs[1] = testing instance matrix
feature_number = (int)mxGetN(prhs[1]);
testing_instance_number = (int)mxGetM(prhs[1]);
label_vector_row_num = (int)mxGetM(prhs[0]);
label_vector_col_num = (int)mxGetN(prhs[0]);
if(label_vector_row_num!=testing_instance_number)
{
mexPrintf("Length of label vector does not match # of instances.\n");
fake_answer(nlhs, plhs);
return;
}
if(label_vector_col_num!=1)
{
mexPrintf("label (1st argument) should be a vector (# of column is 1).\n");
fake_answer(nlhs, plhs);
return;
}
ptr_instance = mxGetPr(prhs[1]);
ptr_label = mxGetPr(prhs[0]);
// transpose instance matrix
if(mxIsSparse(prhs[1]))
{
if(model->param.kernel_type == PRECOMPUTED)
{
// precomputed kernel requires dense matrix, so we make one
mxArray *rhs[1], *lhs[1];
rhs[0] = mxDuplicateArray(prhs[1]);
if(mexCallMATLAB(1, lhs, 1, rhs, "full"))
{
mexPrintf("Error: cannot full testing instance matrix\n");
fake_answer(nlhs, plhs);
return;
}
ptr_instance = mxGetPr(lhs[0]);
mxDestroyArray(rhs[0]);
}
else
{
mxArray *pprhs[1];
pprhs[0] = mxDuplicateArray(prhs[1]);
if(mexCallMATLAB(1, pplhs, 1, pprhs, "transpose"))
{
mexPrintf("Error: cannot transpose testing instance matrix\n");
fake_answer(nlhs, plhs);
return;
}
}
}
if(predict_probability)
{
if(svm_type==NU_SVR || svm_type==EPSILON_SVR)
info("Prob. model for test data: target value = predicted value + z,\nz: Laplace distribution e^(-|z|/sigma)/(2sigma),sigma=%g\n",svm_get_svr_probability(model));
else
prob_estimates = (double *) malloc(nr_class*sizeof(double));
}
tplhs[0] = mxCreateDoubleMatrix(testing_instance_number, 1, mxREAL);
if(predict_probability)
{
// prob estimates are in plhs[2]
if(svm_type==C_SVC || svm_type==NU_SVC)
tplhs[2] = mxCreateDoubleMatrix(testing_instance_number, nr_class, mxREAL);
else
tplhs[2] = mxCreateDoubleMatrix(0, 0, mxREAL);
}
else
{
// decision values are in plhs[2]
if(svm_type == ONE_CLASS ||
svm_type == EPSILON_SVR ||
svm_type == NU_SVR ||
nr_class == 1) // if only one class in training data, decision values are still returned.
tplhs[2] = mxCreateDoubleMatrix(testing_instance_number, 1, mxREAL);
else
tplhs[2] = mxCreateDoubleMatrix(testing_instance_number, nr_class*(nr_class-1)/2, mxREAL);
}
ptr_predict_label = mxGetPr(tplhs[0]);
ptr_prob_estimates = mxGetPr(tplhs[2]);
ptr_dec_values = mxGetPr(tplhs[2]);
x = (struct svm_node*)malloc((feature_number+1)*sizeof(struct svm_node) );
for(instance_index=0;instance_index<testing_instance_number;instance_index++)
{
int i;
double target_label, predict_label;
target_label = ptr_label[instance_index];
if(mxIsSparse(prhs[1]) && model->param.kernel_type != PRECOMPUTED) // prhs[1]^T is still sparse
read_sparse_instance(pplhs[0], instance_index, x);
else
{
for(i=0;i<feature_number;i++)
{
x[i].index = i+1;
x[i].value = ptr_instance[testing_instance_number*i+instance_index];
}
x[feature_number].index = -1;
}
if(predict_probability)
{
if(svm_type==C_SVC || svm_type==NU_SVC)
{
predict_label = svm_predict_probability(model, x, prob_estimates);
ptr_predict_label[instance_index] = predict_label;
for(i=0;i<nr_class;i++)
ptr_prob_estimates[instance_index + i * testing_instance_number] = prob_estimates[i];
} else {
predict_label = svm_predict(model,x);
ptr_predict_label[instance_index] = predict_label;
}
}
else
{
if(svm_type == ONE_CLASS ||
svm_type == EPSILON_SVR ||
svm_type == NU_SVR)
{
double res;
predict_label = svm_predict_values(model, x, &res);
ptr_dec_values[instance_index] = res;
}
else
{
double *dec_values = (double *) malloc(sizeof(double) * nr_class*(nr_class-1)/2);
predict_label = svm_predict_values(model, x, dec_values);
if(nr_class == 1)
ptr_dec_values[instance_index] = 1;
else
for(i=0;i<(nr_class*(nr_class-1))/2;i++)
ptr_dec_values[instance_index + i * testing_instance_number] = dec_values[i];
free(dec_values);
}
ptr_predict_label[instance_index] = predict_label;
}
if(predict_label == target_label)
++correct;
error += (predict_label-target_label)*(predict_label-target_label);
sump += predict_label;
sumt += target_label;
sumpp += predict_label*predict_label;
sumtt += target_label*target_label;
sumpt += predict_label*target_label;
++total;
}
if(svm_type==NU_SVR || svm_type==EPSILON_SVR)
{
info("Mean squared error = %g (regression)\n",error/total);
info("Squared correlation coefficient = %g (regression)\n",
((total*sumpt-sump*sumt)*(total*sumpt-sump*sumt))/
((total*sumpp-sump*sump)*(total*sumtt-sumt*sumt))
);
}
else
info("Accuracy = %g%% (%d/%d) (classification)\n",
(double)correct/total*100,correct,total);
// return accuracy, mean squared error, squared correlation coefficient
tplhs[1] = mxCreateDoubleMatrix(3, 1, mxREAL);
ptr = mxGetPr(tplhs[1]);
ptr[0] = (double)correct/total*100;
ptr[1] = error/total;
ptr[2] = ((total*sumpt-sump*sumt)*(total*sumpt-sump*sumt))/
((total*sumpp-sump*sump)*(total*sumtt-sumt*sumt));
free(x);
if(prob_estimates != NULL)
free(prob_estimates);
switch(nlhs)
{
case 3:
plhs[2] = tplhs[2];
plhs[1] = tplhs[1];
case 1:
case 0:
plhs[0] = tplhs[0];
}
}
void exit_with_help()
{
mexPrintf(
"Usage: [predicted_label, accuracy, decision_values/prob_estimates] = svmpredict(testing_label_vector, testing_instance_matrix, model, 'libsvm_options')\n"
" [predicted_label] = svmpredict(testing_label_vector, testing_instance_matrix, model, 'libsvm_options')\n"
"Parameters:\n"
" model: SVM model structure from svmtrain.\n"
" libsvm_options:\n"
" -b probability_estimates: whether to predict probability estimates, 0 or 1 (default 0); one-class SVM not supported yet\n"
" -q : quiet mode (no outputs)\n"
"Returns:\n"
" predicted_label: SVM prediction output vector.\n"
" accuracy: a vector with accuracy, mean squared error, squared correlation coefficient.\n"
" prob_estimates: If selected, probability estimate vector.\n"
);
}
void mexFunction( int nlhs, mxArray *plhs[],
int nrhs, const mxArray *prhs[] )
{
int prob_estimate_flag = 0;
struct svm_model *model;
info = &mexPrintf;
if(nlhs == 2 || nlhs > 3 || nrhs > 4 || nrhs < 3)
{
exit_with_help();
fake_answer(nlhs, plhs);
return;
}
if(!mxIsDouble(prhs[0]) || !mxIsDouble(prhs[1])) {
mexPrintf("Error: label vector and instance matrix must be double\n");
fake_answer(nlhs, plhs);
return;
}
if(mxIsStruct(prhs[2]))
{
const char *error_msg;
// parse options
if(nrhs==4)
{
int i, argc = 1;
char cmd[CMD_LEN], *argv[CMD_LEN/2];
// put options in argv[]
mxGetString(prhs[3], cmd, mxGetN(prhs[3]) + 1);
if((argv[argc] = strtok(cmd, " ")) != NULL)
while((argv[++argc] = strtok(NULL, " ")) != NULL)
;
for(i=1;i<argc;i++)
{
if(argv[i][0] != '-') break;
if((++i>=argc) && argv[i-1][1] != 'q')
{
exit_with_help();
fake_answer(nlhs, plhs);
return;
}
switch(argv[i-1][1])
{
case 'b':
prob_estimate_flag = atoi(argv[i]);
break;
case 'q':
i--;
info = &print_null;
break;
default:
mexPrintf("Unknown option: -%c\n", argv[i-1][1]);
exit_with_help();
fake_answer(nlhs, plhs);
return;
}
}
}
model = matlab_matrix_to_model(prhs[2], &error_msg);
if (model == NULL)
{
mexPrintf("Error: can't read model: %s\n", error_msg);
fake_answer(nlhs, plhs);
return;
}
if(prob_estimate_flag)
{
if(svm_check_probability_model(model)==0)
{
mexPrintf("Model does not support probabiliy estimates\n");
fake_answer(nlhs, plhs);
svm_free_and_destroy_model(&model);
return;
}
}
else
{
if(svm_check_probability_model(model)!=0)
info("Model supports probability estimates, but disabled in predicton.\n");
}
predict(nlhs, plhs, prhs, model, prob_estimate_flag);
// destroy model
svm_free_and_destroy_model(&model);
}
else
{
mexPrintf("model file should be a struct array\n");
fake_answer(nlhs, plhs);
}
return;
}