Beispiel #1
0
def cross_validate(subject, data_path, reg_C, random_cv=False):
    if random_cv:
        d = load_train_data(data_path, subject)
        x, y = d['x'], d['y']
        skf = StratifiedKFold(y, n_folds=10)
    else:
        filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
        data_grouped_by_hour = load_grouped_train_data(
            data_path, subject, filenames_grouped_by_hour)
        n_preictal, n_interictal = len(data_grouped_by_hour['preictal']), len(
            data_grouped_by_hour['interictal'])
        hours_data = data_grouped_by_hour['preictal'] + data_grouped_by_hour[
            'interictal']
        hours_labels = np.concatenate(
            (np.ones(n_preictal), np.zeros(n_interictal)))
        n_folds = n_preictal
        skf = StratifiedKFold(hours_labels, n_folds=n_folds)

    preictal_probs, labels = [], []
    for train_indexes, valid_indexes in skf:
        x_train, x_valid = [], []
        y_train, y_valid = [], []
        for i in train_indexes:
            x_train.extend(hours_data[i])
            y_train.extend(hours_labels[i] * np.ones(len(hours_data[i])))
        for i in valid_indexes:
            x_valid.extend(hours_data[i])
            y_valid.extend(hours_labels[i] * np.ones(len(hours_data[i])))

        x_train = [x[..., np.newaxis] for x in x_train]
        x_train = np.concatenate(x_train, axis=3)
        x_train = np.rollaxis(x_train, axis=3)
        y_train = np.array(y_train)

        x_valid = [x[..., np.newaxis] for x in x_valid]
        x_valid = np.concatenate(x_valid, axis=3)
        x_valid = np.rollaxis(x_valid, axis=3)
        y_valid = np.array(y_valid)

        n_valid_examples = x_valid.shape[0]
        n_timesteps = x_valid.shape[-1]

        x_train, y_train = reshape_data(x_train, y_train)
        data_scaler = StandardScaler()
        x_train = data_scaler.fit_transform(x_train)

        logreg = LogisticRegression(C=reg_C)
        logreg.fit(x_train, y_train)

        x_valid = reshape_data(x_valid)
        x_valid = data_scaler.transform(x_valid)

        p_valid = predict(logreg, x_valid, n_valid_examples, n_timesteps)

        preictal_probs.extend(p_valid)
        labels.extend(y_valid)

    return preictal_probs, labels
def curve_per_subject(subject, data_path, test_labels):
    d = load_train_data(data_path, subject)
    x, y_10m = d['x'], d['y']
    n_train_examples = x.shape[0]
    n_timesteps = x.shape[-1]
    print 'n_preictal', np.sum(y_10m)
    print 'n_inetrictal', np.sum(y_10m - 1)

    x, y = reshape_data(x, y_10m)
    data_scaler = StandardScaler()
    x = data_scaler.fit_transform(x)

    lda = LDA()
    lda.fit(x, y)

    pred_1m = lda.predict_proba(x)[:, 1]
    pred_10m = np.reshape(pred_1m, (n_train_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)
    fpr, tpr, threshold = roc_curve(y_10m, pred_10m)
    c = np.sqrt((1 - tpr) ** 2 + fpr ** 2)
    opt_threshold = threshold[np.where(c == np.min(c))[0]][-1]
    print opt_threshold

    # ------- TEST ---------------

    d = load_test_data(data_path, subject)
    x_test, id = d['x'], d['id']
    n_test_examples = x_test.shape[0]
    n_timesteps = x_test.shape[3]
    x_test = reshape_data(x_test)
    x_test = data_scaler.transform(x_test)

    pred_1m = lda.predict_proba(x_test)[:, 1]
    pred_10m = np.reshape(pred_1m, (n_test_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)

    y_pred = np.zeros_like(test_labels)
    y_pred[np.where(pred_10m >= opt_threshold)] = 1
    cm = confusion_matrix(test_labels, y_pred)
    print print_cm(cm, labels=['interictal', 'preictal'])
    sn = 1.0 * cm[1, 1] / (cm[1, 1] + cm[1, 0])
    sp = 1.0 * cm[0, 0] / (cm[0, 0] + cm[0, 1])
    print sn, sp

    sn, sp = [], []
    t_list = np.arange(0.0, 1.0, 0.01)
    for t in t_list:
        y_pred = np.zeros_like(test_labels)
        y_pred[np.where(pred_10m >= t)] = 1
        cm = confusion_matrix(test_labels, y_pred)
        sn_t = 1.0 * cm[1, 1] / (cm[1, 1] + cm[1, 0])
        sp_t = 1.0 * cm[0, 0] / (cm[0, 0] + cm[0, 1])
        sn.append(sn_t)
        sp.append(sp_t)

    return t_list, sn, sp
Beispiel #3
0
def curve_per_subject(subject, data_path, test_labels):
    d = load_train_data(data_path, subject)
    x, y_10m = d['x'], d['y']
    n_train_examples = x.shape[0]
    n_timesteps = x.shape[-1]
    print 'n_preictal', np.sum(y_10m)
    print 'n_inetrictal', np.sum(y_10m - 1)

    x, y = reshape_data(x, y_10m)
    data_scaler = StandardScaler()
    x = data_scaler.fit_transform(x)

    lda = LDA()
    lda.fit(x, y)

    pred_1m = lda.predict_proba(x)[:, 1]
    pred_10m = np.reshape(pred_1m, (n_train_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)
    fpr, tpr, threshold = roc_curve(y_10m, pred_10m)
    c = np.sqrt((1 - tpr)**2 + fpr**2)
    opt_threshold = threshold[np.where(c == np.min(c))[0]][-1]
    print opt_threshold

    # ------- TEST ---------------

    d = load_test_data(data_path, subject)
    x_test, id = d['x'], d['id']
    n_test_examples = x_test.shape[0]
    n_timesteps = x_test.shape[3]
    x_test = reshape_data(x_test)
    x_test = data_scaler.transform(x_test)

    pred_1m = lda.predict_proba(x_test)[:, 1]
    pred_10m = np.reshape(pred_1m, (n_test_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)

    y_pred = np.zeros_like(test_labels)
    y_pred[np.where(pred_10m >= opt_threshold)] = 1
    cm = confusion_matrix(test_labels, y_pred)
    print print_cm(cm, labels=['interictal', 'preictal'])
    sn = 1.0 * cm[1, 1] / (cm[1, 1] + cm[1, 0])
    sp = 1.0 * cm[0, 0] / (cm[0, 0] + cm[0, 1])
    print sn, sp

    sn, sp = [], []
    t_list = np.arange(0.0, 1.0, 0.01)
    for t in t_list:
        y_pred = np.zeros_like(test_labels)
        y_pred[np.where(pred_10m >= t)] = 1
        cm = confusion_matrix(test_labels, y_pred)
        sn_t = 1.0 * cm[1, 1] / (cm[1, 1] + cm[1, 0])
        sp_t = 1.0 * cm[0, 0] / (cm[0, 0] + cm[0, 1])
        sn.append(sn_t)
        sp.append(sp_t)

    return t_list, sn, sp
def cross_validate(subject, data_path, reg_C, random_cv=False):
    if random_cv:
        d = load_train_data(data_path,subject)
        x, y = d['x'], d['y']
        skf = StratifiedKFold(y, n_folds=10)
    else:
        filenames_grouped_by_hour = cPickle.load(open('filenames.pickle'))
        data_grouped_by_hour = load_grouped_train_data(data_path, subject, filenames_grouped_by_hour)
        n_preictal, n_interictal = len(data_grouped_by_hour['preictal']), len(data_grouped_by_hour['interictal'])
        hours_data = data_grouped_by_hour['preictal'] + data_grouped_by_hour['interictal']
        hours_labels = np.concatenate((np.ones(n_preictal), np.zeros(n_interictal)))
        n_folds = n_preictal
        skf = StratifiedKFold(hours_labels, n_folds=n_folds)


    preictal_probs, labels = [], []
    for train_indexes, valid_indexes in skf:
        x_train, x_valid = [], []
        y_train, y_valid = [], []
        for i in train_indexes:
            x_train.extend(hours_data[i])
            y_train.extend(hours_labels[i] * np.ones(len(hours_data[i])))
        for i in valid_indexes:
            x_valid.extend(hours_data[i])
            y_valid.extend(hours_labels[i] * np.ones(len(hours_data[i])))

        x_train = [x[..., np.newaxis] for x in x_train]
        x_train = np.concatenate(x_train, axis=3)
        x_train = np.rollaxis(x_train, axis=3)
        y_train = np.array(y_train)

        x_valid = [x[..., np.newaxis] for x in x_valid]
        x_valid = np.concatenate(x_valid, axis=3)
        x_valid = np.rollaxis(x_valid, axis=3)
        y_valid = np.array(y_valid)

        n_valid_examples = x_valid.shape[0]
        n_timesteps = x_valid.shape[-1]

        x_train, y_train = reshape_data(x_train, y_train)
        data_scaler = StandardScaler()
        x_train = data_scaler.fit_transform(x_train)

        logreg = LogisticRegression(C=reg_C)
        logreg.fit(x_train, y_train)

        x_valid = reshape_data(x_valid)
        x_valid = data_scaler.transform(x_valid)

        p_valid = predict(logreg, x_valid, n_valid_examples, n_timesteps)

        preictal_probs.extend(p_valid)
        labels.extend(y_valid)

    return preictal_probs, labels
def train(subject, data_path, reg_C=None):
    d = load_train_data(data_path, subject)
    x, y = d['x'], d['y']
    x, y = reshape_data(x, y)
    data_scaler = StandardScaler()
    x = data_scaler.fit_transform(x)
    lda = LogisticRegression(C=reg_C)
    lda.fit(x, y)
    return lda, data_scaler
def predict(subject, model, data_scaler, data_path, submission_path, test_labels, opt_threshold_train):
    d = load_test_data(data_path, subject)
    x_test, id = d['x'], d['id']
    n_test_examples = x_test.shape[0]
    n_timesteps = x_test.shape[3]

    x_test = reshape_data(x_test)
    x_test = data_scaler.transform(x_test)

    pred_1m = model.predict_proba(x_test)[:, 1]

    pred_10m = np.reshape(pred_1m, (n_test_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)
    ans = zip(id, pred_10m)
    df = DataFrame(data=ans, columns=['clip', 'preictal'])
    df.to_csv(submission_path + '/' + subject + '.csv', index=False, header=True)
def train(subject, data_path, plot=False):
    d = load_train_data(data_path, subject)
    x, y = d['x'], d['y']
    print 'n_preictal', np.sum(y)
    print 'n_inetrictal', np.sum(y - 1)
    n_channels = x.shape[1]
    n_fbins = x.shape[2]

    x, y = reshape_data(x, y)
    data_scaler = StandardScaler()
    x = data_scaler.fit_transform(x)

    lda = LDA()
    lda.fit(x, y)
    coef = lda.scalings_ * lda.coef_[:1].T
    channels = []
    fbins = []
    for c in range(n_channels):
        fbins.extend(range(n_fbins))  # 0- delta, 1- theta ...
        channels.extend([c] * n_fbins)

    if plot:
        fig = plt.figure()
        for i in range(n_channels):
            if n_channels == 24:
                fig.add_subplot(4, 6, i)
            else:
                fig.add_subplot(4, 4, i)
            ax = plt.gca()
            ax.set_xlim([0, n_fbins])
            ax.set_xticks(np.arange(0.5, n_fbins + 0.5, 1))
            ax.set_xticklabels(np.arange(0, n_fbins))
            max_y = max(abs(coef)) + 0.01
            ax.set_ylim([0, max_y])
            ax.set_yticks(
                np.around(np.arange(0, max_y, max_y / 4.0), decimals=1))
            for label in (ax.get_xticklabels() + ax.get_yticklabels()):
                label.set_fontsize(15)
            plt.bar(range(0, n_fbins),
                    abs(coef[i * n_fbins:i * n_fbins + n_fbins]))
        fig.suptitle(subject, fontsize=20)
        plt.show()

    coefs = np.reshape(coef, (n_channels, n_fbins))
    return lda, data_scaler, coefs
def predict(subject, model, data_scaler, data_path, submission_path):
    d = load_test_data(data_path, subject)
    x_test, id = d['x'], d['id']
    n_test_examples = x_test.shape[0]
    n_timesteps = x_test.shape[3]

    x_test = reshape_data(x_test)
    x_test = data_scaler.transform(x_test)

    pred_1m = model.predict_proba(x_test)[:, 1]

    pred_10m = np.reshape(pred_1m, (n_test_examples, n_timesteps))
    pred_10m = np.mean(pred_10m, axis=1)

    ans = zip(id, pred_10m)
    df = DataFrame(data=ans, columns=['clip', 'preictal'])
    df.to_csv(submission_path + '/' + subject + '.csv', index=False, header=True)
    return pred_10m
def train(subject, data_path, plot=False):
    d = load_train_data(data_path, subject)
    x, y = d['x'], d['y']
    print 'n_preictal', np.sum(y)
    print 'n_inetrictal', np.sum(y - 1)
    n_channels = x.shape[1]
    n_fbins = x.shape[2]

    x, y = reshape_data(x, y)
    data_scaler = StandardScaler()
    x = data_scaler.fit_transform(x)

    lda = LDA()
    lda.fit(x, y)
    coef = lda.scalings_ * lda.coef_[:1].T
    channels = []
    fbins = []
    for c in range(n_channels):
        fbins.extend(range(n_fbins))  # 0- delta, 1- theta ...
        channels.extend([c] * n_fbins)

    if plot:
        fig = plt.figure()
        for i in range(n_channels):
            if n_channels == 24:
                fig.add_subplot(4, 6, i)
            else:
                fig.add_subplot(4, 4, i)
            ax = plt.gca()
            ax.set_xlim([0, n_fbins])
            ax.set_xticks(np.arange(0.5, n_fbins + 0.5, 1))
            ax.set_xticklabels(np.arange(0, n_fbins))
            max_y = max(abs(coef)) + 0.01
            ax.set_ylim([0, max_y])
            ax.set_yticks(np.around(np.arange(0, max_y, max_y / 4.0), decimals=1))
            for label in (ax.get_xticklabels() + ax.get_yticklabels()):
                label.set_fontsize(15)
            plt.bar(range(0, n_fbins), abs(coef[i * n_fbins:i * n_fbins + n_fbins]))
        fig.suptitle(subject, fontsize=20)
        plt.show()

    coefs = np.reshape(coef, (n_channels, n_fbins))
    return lda, data_scaler, coefs