Esempio n. 1
0
def apply_sampling(X_data, Y_data, sampling, n_states, maxlen):
    ratio = float(np.count_nonzero(Y_data == 1)) / \
        float(np.count_nonzero(Y_data == 0))
    X_data = np.reshape(X_data, (len(X_data), n_states * maxlen))
    # 'Random over-sampling'
    if sampling == 'OverSampler':
        OS = OverSampler(ratio=ratio, verbose=True)
    # 'Random under-sampling'
    elif sampling == 'UnderSampler':
        OS = UnderSampler(verbose=True)
    # 'Tomek under-sampling'
    elif sampling == 'TomekLinks':
        OS = TomekLinks(verbose=True)
    # Oversampling
    elif sampling == 'SMOTE':
        OS = SMOTE(ratio=1, verbose=True, kind='regular')
    # Oversampling - Undersampling
    elif sampling == 'SMOTETomek':
        OS = SMOTETomek(ratio=ratio, verbose=True)
    # Undersampling
    elif sampling == 'OneSidedSelection':
        OS = OneSidedSelection(verbose=True)
    # Undersampling
    elif sampling == 'CondensedNearestNeighbour':
        OS = CondensedNearestNeighbour(verbose=True)
    # Undersampling
    elif sampling == 'NearMiss':
        OS = NearMiss(version=1, verbose=True)
    # Undersampling
    elif sampling == 'NeighbourhoodCleaningRule':
        OS = NeighbourhoodCleaningRule(verbose=True)
    # ERROR: WRONG SAMPLER, TERMINATE
    else:
        print('Wrong sampling variable you have set... Exiting...')
        sys.exit()
    # print('shape ' + str(X.shape))
    X_data, Y_data = OS.fit_transform(X_data, Y_data)
    return X_data, Y_data