ATL_CIKM-2019/DataManipulator.py

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# Marcus Vinicius Sousa Leite de Carvalho
# marcus.decarvalho@ntu.edu.sg
# ivsucram@gmail.com
#
# NANYANG TECHNOLOGICAL UNIVERSITY - NTUITIVE PTE LTD Dual License Agreement
# Non-Commercial Use Only
# This NTUITIVE License Agreement, including all exhibits ("NTUITIVE-LA") is a legal agreement between you and NTUITIVE (or “we”) located at 71 Nanyang Drive, NTU Innovation Centre, #01-109, Singapore 637722, a wholly owned subsidiary of Nanyang Technological University (“NTU”) for the software or data identified above, which may include source code, and any associated materials, text or speech files, associated media and "online" or electronic documentation and any updates we provide in our discretion (together, the "Software").
#
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#
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#
# Copyright (c) NTUITIVE. All rights reserved.
import numpy as np
import pandas as pd
class DataManipulator:
data = None
number_features = None
number_classes = None
number_fold_elements = None
number_minibatches = None
source_data = None
target_data = None
__X = None
__y = None
__Xs = None
__ys = None
__Xt = None
__yt = None
__permutedX = None
__permutedy = None
__index_permutation = None
__data_folder_path = None
def __init__(self, data_folder_path):
self.__data_folder_path = data_folder_path
def load_mnist(self):
raise TypeError('Not implemented')
def load_custom_csv(self):
print('Loading data.csv')
self.data = pd.read_csv(filepath_or_buffer='data.csv', header=None)
self.check_dataset_is_even()
self.number_features = self.data.shape[1] - 1
self.X = self.data.iloc[:, 0:self.number_features].add_prefix('feature_').astype(dtype=np.float64)
self.y = pd.get_dummies(self.data.iloc[:, self.number_features], prefix='class', dtype=np.float64)
self.number_classes = self.y.shape[1]
self.data = self.X.join(self.y)
def normalize(self):
print('Normalizing data')
self.X = (self.X - self.X.min())/(self.X.max() - self.X.min())
self.data = self.X.join(self.y)
def normalize_image(self):
raise TypeError('Not implemented')
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def split_as_source_target_streams(self, number_fold_elements=0, sampling_ratio=0.5):
self.number_fold_elements = number_fold_elements if number_fold_elements is not 0 else self.data.shape[0]
self.__split_as_source_target_streams_dallas_2(self.number_fold_elements, sampling_ratio)
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self.__create_Xs_ys_Xt_yt()
def get_Xs(self, number_minibatch):
return self.Xs[number_minibatch].values
def get_ys(self, number_minibatch):
return self.ys[number_minibatch].values
def get_Xt(self, number_minibatch):
return self.Xt[number_minibatch].values
def get_yt(self, number_minibatch):
return self.yt[number_minibatch].values
def __split_as_source_target_streams_dallas_2(self, elements_per_fold=1000, sampling_ratio=0.5):
rows_number = self.data.shape[0]
number_of_folds = round(rows_number / elements_per_fold)
chunk_size = round(rows_number / number_of_folds)
number_of_folds_rounded = round(rows_number / chunk_size)
if (rows_number / number_of_folds_rounded) % 2:
self.number_fold_elements = min(elements_per_fold, np.floor(rows_number / number_of_folds_rounded) - 1)
else:
self.number_fold_elements = min(elements_per_fold, np.floor(rows_number / number_of_folds_rounded))
if rows_number / number_of_folds_rounded > elements_per_fold:
number_of_folds = number_of_folds + 1
self.number_minibatches = number_of_folds
ck = self.number_fold_elements
self.source = []
self.target = []
def chunkify(pnds):
nfe = self.number_fold_elements # readability
nof = self.number_minibatches # readability
return [pnds[i * nfe: (i + 1) * nfe] for i in range(nof)]
for x, data in zip(chunkify(self.X), chunkify(self.data)):
x_mean = np.mean(x, axis=0)
norm_1 = np.linalg.norm(x - x_mean, axis=0)
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norm_2 = np.linalg.norm(x - x_mean, axis=1)
numerator = norm_2
denominator = 2. * (norm_1.std() ** 2)
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probability = np.exp(-numerator / denominator)
idx = np.argsort(probability)
m = data.shape[0]
self.source.append(data.iloc[idx[: round(m * sampling_ratio)]].sort_index())
self.target.append(data.iloc[idx[round(m * sampling_ratio):]].sort_index())
def __create_Xs_ys_Xt_yt(self):
self.X, self.y = [], []
self.Xs, self.ys = [], []
self.Xt, self.yt = [], []
self.__permutedX, self.__permutedy = [], []
self.__index_permutation = []
for i in range(0, self.number_minibatches):
self.Xs.append(self.source[i].iloc[:, : -self.number_classes])
self.ys.append(self.source[i].iloc[:, self.number_features:])
self.Xt.append(self.target[i].iloc[:, : -self.number_classes])
self.yt.append(self.target[i].iloc[:, self.number_features:])
self.X.append(pd.concat([self.Xs[i], self.Xt[i]]))
self.y.append(pd.concat([self.ys[i], self.yt[i]]))
x = self.X[i]
y = self.y[i]
p = np.random.permutation(x.shape[0])
self.__permutedX.append(x.iloc[p])
self.__permutedy.append(y.iloc[p])
self.__index_permutation.append(p)
def check_dataset_is_even(self):
if self.data.shape[0] % 2:
self.data.drop(axis='index', index=np.random.randint(1, self.data.shape[0]), inplace=True)