示例#1
0
def test_tfd_nll(occ_dim=15, drop_prob=0.0):
    RESULT_PATH = "IMP_TFD_TM/"
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    data_file = 'data/tfd_data_48x48.pkl'
    dataset = load_tfd(tfd_pkl_name=data_file,
                       which_set='unlabeled',
                       fold='all')
    Xtr_unlabeled = dataset[0]
    dataset = load_tfd(tfd_pkl_name=data_file, which_set='train', fold='all')
    Xtr_train = dataset[0]
    Xtr = np.vstack([Xtr_unlabeled, Xtr_train])
    dataset = load_tfd(tfd_pkl_name=data_file, which_set='valid', fold='all')
    Xva = dataset[0]
    Xtr = to_fX(shift_and_scale_into_01(Xtr))
    Xva = to_fX(shift_and_scale_into_01(Xva))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 250
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX(all_pix_mean * np.ones((Xtr.shape[1], )))

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    log_name = "{}_RESULTS.txt".format(result_tag)
    out_file = open(log_name, 'wb')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva, drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    result = TM.best_match_nll(xo, xm)
    match_on_known = np.mean(result[0])
    match_on_unknown = np.mean(result[1])
    str0 = "Test 1:"
    str1 = "    match on known   : {}".format(match_on_known)
    str2 = "    match on unknown : {}".format(match_on_unknown)
    joint_str = "\n".join([str0, str1, str2])
    print(joint_str)
    out_file.write(joint_str + "\n")
    out_file.flush()
    out_file.close()
    return
def test_tfd_nll(occ_dim=15, drop_prob=0.0):
    RESULT_PATH = "IMP_TFD_TM/"
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    data_file = 'data/tfd_data_48x48.pkl'
    dataset = load_tfd(tfd_pkl_name=data_file, which_set='unlabeled', fold='all')
    Xtr_unlabeled = dataset[0]
    dataset = load_tfd(tfd_pkl_name=data_file, which_set='train', fold='all')
    Xtr_train = dataset[0]
    Xtr = np.vstack([Xtr_unlabeled, Xtr_train])
    dataset = load_tfd(tfd_pkl_name=data_file, which_set='valid', fold='all')
    Xva = dataset[0]
    Xtr = to_fX(shift_and_scale_into_01(Xtr))
    Xva = to_fX(shift_and_scale_into_01(Xva))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 250
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX( all_pix_mean * np.ones((Xtr.shape[1],)) )

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    log_name = "{}_RESULTS.txt".format(result_tag)
    out_file = open(log_name, 'wb')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva, drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    result = TM.best_match_nll(xo, xm)
    match_on_known = np.mean(result[0])
    match_on_unknown = np.mean(result[1])
    str0 = "Test 1:"
    str1 = "    match on known   : {}".format(match_on_known)
    str2 = "    match on unknown : {}".format(match_on_unknown)
    joint_str = "\n".join([str0, str1, str2])
    print(joint_str)
    out_file.write(joint_str+"\n")
    out_file.flush()
    out_file.close()
    return
示例#3
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def test_mnist_img(occ_dim=15, drop_prob=0.0):
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    dataset = 'data/mnist.pkl.gz'
    datasets = load_udm(dataset, as_shared=False, zero_mean=False)
    Xtr = datasets[0][0]
    Xva = datasets[1][0]
    Xtr = to_fX(shift_and_scale_into_01(Xtr))
    Xva = to_fX(shift_and_scale_into_01(Xva))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 200
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX(all_pix_mean * np.ones((Xtr.shape[1], )))

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva[:500], drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    img_match_on_known, img_match_on_unknown = TM.best_match_img(xo, xm)

    display_count = 100
    # visualize matches on known elements
    Xs = np.zeros((2 * display_count, Xva.shape[1]))
    for idx in range(display_count):
        Xs[2 * idx] = xi[idx]
        Xs[(2 * idx) + 1] = img_match_on_known[idx]
    file_name = "{0:s}_SAMPLES_MOK.png".format(result_tag)
    utils.visualize_samples(Xs, file_name, num_rows=20)
    # visualize matches on unknown elements
    Xs = np.zeros((2 * display_count, Xva.shape[1]))
    for idx in range(display_count):
        Xs[2 * idx] = xi[idx]
        Xs[(2 * idx) + 1] = img_match_on_unknown[idx]
    file_name = "{0:s}_SAMPLES_MOU.png".format(result_tag)
    utils.visualize_samples(Xs, file_name, num_rows=20)
    return
def test_mnist_img(occ_dim=15, drop_prob=0.0):
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    dataset = 'data/mnist.pkl.gz'
    datasets = load_udm(dataset, as_shared=False, zero_mean=False)
    Xtr = datasets[0][0]
    Xva = datasets[1][0]
    Xtr = to_fX(shift_and_scale_into_01(Xtr))
    Xva = to_fX(shift_and_scale_into_01(Xva))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 200
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX(all_pix_mean * np.ones((Xtr.shape[1],)))

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva[:500], drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    img_match_on_known, img_match_on_unknown = TM.best_match_img(xo, xm)

    display_count = 100
    # visualize matches on known elements
    Xs = np.zeros((2*display_count, Xva.shape[1]))
    for idx in range(display_count):
        Xs[2*idx] = xi[idx]
        Xs[(2*idx)+1] = img_match_on_known[idx]
    file_name = "{0:s}_SAMPLES_MOK.png".format(result_tag)
    utils.visualize_samples(Xs, file_name, num_rows=20)
    # visualize matches on unknown elements
    Xs = np.zeros((2*display_count, Xva.shape[1]))
    for idx in range(display_count):
        Xs[2*idx] = xi[idx]
        Xs[(2*idx)+1] = img_match_on_unknown[idx]
    file_name = "{0:s}_SAMPLES_MOU.png".format(result_tag)
    utils.visualize_samples(Xs, file_name, num_rows=20)
    return
示例#5
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def test_svhn_nll(occ_dim=15, drop_prob=0.0):
    RESULT_PATH = "IMP_SVHN_TM/"
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    tr_file = 'data/svhn_train_gray.pkl'
    te_file = 'data/svhn_test_gray.pkl'
    ex_file = 'data/svhn_extra_gray.pkl'
    data = load_svhn_gray(tr_file, te_file, ex_file=ex_file, ex_count=200000)
    Xtr = to_fX(shift_and_scale_into_01(np.vstack([data['Xtr'], data['Xex']])))
    Xva = to_fX(shift_and_scale_into_01(data['Xte']))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 250
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX(all_pix_mean * np.ones((Xtr.shape[1], )))

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    log_name = "{}_RESULTS.txt".format(result_tag)
    out_file = open(log_name, 'wb')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva, drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    result = TM.best_match_nll(xo, xm)
    match_on_known = np.mean(result[0])
    match_on_unknown = np.mean(result[1])
    str0 = "Test 1:"
    str1 = "    match on known   : {}".format(match_on_known)
    str2 = "    match on unknown : {}".format(match_on_unknown)
    joint_str = "\n".join([str0, str1, str2])
    print(joint_str)
    out_file.write(joint_str + "\n")
    out_file.flush()
    out_file.close()
    return
def test_svhn_nll(occ_dim=15, drop_prob=0.0):
    RESULT_PATH = "IMP_SVHN_TM/"
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    tr_file = 'data/svhn_train_gray.pkl'
    te_file = 'data/svhn_test_gray.pkl'
    ex_file = 'data/svhn_extra_gray.pkl'
    data = load_svhn_gray(tr_file, te_file, ex_file=ex_file, ex_count=200000)
    Xtr = to_fX( shift_and_scale_into_01(np.vstack([data['Xtr'], data['Xex']])) )
    Xva = to_fX( shift_and_scale_into_01(data['Xte']) )
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 250
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX( all_pix_mean * np.ones((Xtr.shape[1],)) )

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    log_name = "{}_RESULTS.txt".format(result_tag)
    out_file = open(log_name, 'wb')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva, drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    result = TM.best_match_nll(xo, xm)
    match_on_known = np.mean(result[0])
    match_on_unknown = np.mean(result[1])
    str0 = "Test 1:"
    str1 = "    match on known   : {}".format(match_on_known)
    str2 = "    match on unknown : {}".format(match_on_unknown)
    joint_str = "\n".join([str0, str1, str2])
    print(joint_str)
    out_file.write(joint_str+"\n")
    out_file.flush()
    out_file.close()
    return
示例#7
0
def test_mnist_nll(occ_dim=15, drop_prob=0.0):
    #########################################
    # Format the result tag more thoroughly #
    #########################################
    dp_int = int(100.0 * drop_prob)
    result_tag = RESULT_PATH + "TM_OD{}_DP{}".format(occ_dim, dp_int)

    ##########################
    # Get some training data #
    ##########################
    rng = np.random.RandomState(1234)
    dataset = 'data/mnist.pkl.gz'
    datasets = load_udm(dataset, as_shared=False, zero_mean=False)
    Xtr = datasets[0][0]
    Xva = datasets[1][0]
    Xtr = to_fX(shift_and_scale_into_01(Xtr))
    Xva = to_fX(shift_and_scale_into_01(Xva))
    tr_samples = Xtr.shape[0]
    va_samples = Xva.shape[0]
    batch_size = 200
    batch_reps = 1
    all_pix_mean = np.mean(np.mean(Xtr, axis=1))
    data_mean = to_fX(all_pix_mean * np.ones((Xtr.shape[1],)))

    TM = TemplateMatchImputer(x_train=Xtr, x_type='bernoulli')

    log_name = "{}_RESULTS.txt".format(result_tag)
    out_file = open(log_name, 'wb')

    Xva = row_shuffle(Xva)
    # record an estimate of performance on the test set
    xi, xo, xm = construct_masked_data(Xva, drop_prob=drop_prob, \
                                       occ_dim=occ_dim, data_mean=data_mean)
    result = TM.best_match_nll(xo, xm)
    match_on_known = np.mean(result[0])
    match_on_unknown = np.mean(result[1])
    str0 = "Test 1:"
    str1 = "    match on known   : {}".format(match_on_known)
    str2 = "    match on unknown : {}".format(match_on_unknown)
    joint_str = "\n".join([str0, str1, str2])
    print(joint_str)
    out_file.write(joint_str+"\n")
    out_file.flush()
    out_file.close()
    return