Example #1
0
def format_data(ae_1_obj, ae_2_obj, type='test'):
    _, X_val, X_test, _, Y_val, Y_test, _ = data_feeder.get_data_val(True)

    if type == 'val':
        X = X_val
        Y = Y_val

    elif type == 'test':
        X = X_test
        Y = Y_test

    # Test

    xformed_exog_test = ae_1_obj.model.predict(X)

    _x1 = get_windowed_data(data=xformed_exog_test, window_size=exog_lag)
    _x2 = get_windowed_data(data=Y, window_size=endo_lag + 1)
    _x2 = _x2[:, 0:endo_lag]
    _y = _x2[:, -1:]

    num_samples = min(_x1.shape[0], _x2.shape[0])
    _x1 = _x1[-num_samples:]
    _x2 = _x2[-num_samples:]
    _y = _y[-num_samples:, :]

    ae2_inp = np.concatenate([_x1, _x2], axis=-1)
    _x = ae_2_obj.model.predict(ae2_inp)

    return _x, _y
Example #2
0
    def test_model(self):

        _, _, exog_test, _, _, end_test, _ = data_feeder.get_data_val(True)
        x1, x2, y = self.format_data_xy(exog_test, end_test)
        score = self.model.evaluate([x1, x2], y)
        test_mse = score[0]
        return test_mse
def FTDNN():
    global target_window
    batch_size = 128
    global epochs

    X_train, X_val, X_test, Y_train, Y_val, Y_test, _ = data_feeder.get_data_val(
        True)

    train_windowed_data = get_windowed_data_ex(Y_train, target_window + 1)
    test_windowed_data = get_windowed_data_ex(Y_test, target_window + 1)
    val_windowed_data = get_windowed_data_ex(Y_val, target_window + 1)

    # Set up training input and output
    x_train = []
    y_train = []

    for i in range(train_windowed_data.shape[0]):
        x_train.append(train_windowed_data[i, 0:target_window])
        y_train.append(train_windowed_data[i, -1:])
    x_train = np.asarray(x_train)
    y_train = np.asarray(y_train)

    x_train = np.asarray(x_train)
    x_train = np.reshape(x_train, [x_train.shape[0], x_train.shape[1]])
    y_train = np.asarray(y_train)
    y_train = np.reshape(y_train, [y_train.shape[0], y_train.shape[1]])

    x_val = []
    y_val = []

    for i in range(val_windowed_data.shape[0]):
        x_val.append(val_windowed_data[i, 0:target_window])
        y_val.append(val_windowed_data[i, -1:])

    x_val = np.asarray(x_val)
    x_val = np.reshape(x_val, [x_val.shape[0], x_val.shape[1]])
    y_val = np.asarray(y_val)
    y_val = np.reshape(y_val, [y_val.shape[0], y_val.shape[1]])

    x_test = []
    y_test = []

    for i in range(test_windowed_data.shape[0]):
        x_test.append(test_windowed_data[i, 0:target_window])
        y_test.append(test_windowed_data[i, -1:])

    x_test = np.asarray(x_test)
    x_test = np.reshape(x_test, [x_test.shape[0], x_test.shape[1]])
    y_test = np.asarray(y_test)
    y_test = np.reshape(y_test, [y_test.shape[0], y_test.shape[1]])

    model = FTDNN_model(target_window)
    history = model.fit(x_train, y_train, epochs=epochs, batch_size=batch_size)
    train_loss = np.mean(history.history['loss'])

    val_mse = model.evaluate(x_val, y_val, batch_size=1)

    test_mse = model.evaluate(x_test, y_test, batch_size=1)

    return train_loss, val_mse, test_mse
Example #4
0
    def train_model(self):

        exog_train, _, _, end_train, _, _, _ = data_feeder.get_data_val(True)
        x1, x2, y = self.format_data_xy(exog_train, end_train)
        hist = self.model.fit([x1, x2], y, epochs=self.epochs)
        trian_loss = hist.history['loss']
        return np.mean(trian_loss)
def get_data(time_window, type):
    # window of training data = time_window
    X_train, X_val, X_test, Y_train, Y_val, Y_test, _ = data_feeder.get_data_val(
        std=True)

    if type == 'test':
        exg_x = X_test
        end_x = Y_test
    elif type == 'val':
        exg_x = X_val
        end_x = Y_val
    else:
        exg_x = X_train
        end_x = Y_train

    exg_x = utils.get_windowed_data_md(exg_x, time_window)

    # Reshape exg_shape to have same number of channels as exogenous dimensions
    dim = exg_x.shape[-1]
    exg_x = np.reshape(exg_x, [exg_x.shape[0], time_window, dim])
    # print 'exg_x shape', exg_x.shape
    y = np.asanyarray(end_x)
    y = np.reshape(y, [-1, 1])
    res = utils.get_windowed_data(y, time_window + 1)
    end_x = res[:, 0:time_window]
    y = res[:, -1:]
    end_x = np.reshape(end_x, [end_x.shape[0], time_window, 1])
    # print 'end_x shape', end_x.shape

    y = np.reshape(y, [y.shape[0], 1])

    num_samples = y.shape[0]
    exg_x = exg_x[0:num_samples]
    print exg_x.shape, end_x.shape, y.shape
    return exg_x, end_x, y
Example #6
0
def ctdnn_get_data(window_size, type='trian'):
    exog_train, exog_val, exog_test, end_train, end_val, end_test, scaler_array = data_feeder.get_data_val(
        True)

    if type == 'train':
        train_x_exog, train_x_end, train_y = ctdnn_get_data_aux(
            exog_train, end_train, window_size)
        return train_x_exog, train_x_end, train_y
    elif type == 'val':
        val_x_exog, val_x_end, val_y = ctdnn_get_data_aux(
            exog_val, end_val, window_size)
        return val_x_exog, val_x_end, val_y
    else:
        test_x_exog, test_x_end, test_y = ctdnn_get_data_aux(
            exog_test, end_test, window_size)
        return test_x_exog, test_x_end, test_y
def get_val_data():
    global ae_obj
    global window_size

    _, X_val, _, _, Y_val, _, _ = data_feeder.get_data_val(True)

    # set up test data the model
    val_y_inp, val_y_op = get_windowed_y(Y_val, window_size=window_size)
    X_val_ae = ae_obj.reduce(X_val)
    val_exog_inp = X_val_ae[window_size:, :]
    # concatenate train_exog_inp and train_y_op
    val_data_x = np.concatenate([val_y_inp, val_exog_inp], axis=1)
    print 'Validation  Data'
    print val_data_x.shape
    print val_y_op.shape

    return val_data_x, val_y_op
def get_test_data():
    global ae_obj
    global window_size

    _, _, X_test, _, _, Y_test, _ = data_feeder.get_data_val(True)

    # set up test data the model
    test_y_inp, test_y_op = get_windowed_y(Y_test, window_size=window_size)

    X_test_ae = ae_obj.reduce(X_test)
    test_exog_inp = X_test_ae[window_size:, :]

    # concatenate train_exog_inp and train_y_op
    test_data_x = np.concatenate([test_y_inp, test_exog_inp], axis=1)

    print 'Test Data'
    print test_data_x.shape
    print test_y_op.shape
    return test_data_x, test_y_op
def get_data(time_window, type):

    # window of training data = time_window
    X_train, _, X_test, Y_train, Y_val, Y_test, _ = data_feeder.get_data_val(
        std=True)

    if type == 'test':
        y = Y_test
    elif type == 'val':
        y = Y_val
    else:
        y = Y_train

    y = np.asanyarray(y)
    y = np.reshape(y, [-1, 1])
    res = utils.get_windowed_data(y, time_window + 1)
    x = res[:, 0:time_window]
    y = res[:, -1:]
    x = np.reshape(x, [x.shape[0], time_window, 1])
    y = np.reshape(y, [y.shape[0], 1])
    return x, y
def val_test_model(val=False):

    # -------- #

    global lstm_time_step
    global batch_size
    global epochs
    global window_size

    # --------- #

    ae_model = load_model('ae_model.h5')
    lstm_model = load_model('model_1.h5')

    if val == True:
        _, _, X_test, _, _, Y_test, _ = data_feeder.get_data_val(True)
    else:
        _, X_test, _, Y_test, _ = data_feeder.get_data(True)

    # create windows
    inp, op = get_windowed_inp(Y_test, window_size)
    num_samples = inp.shape[0]
    print 'num_samples', num_samples

    X_test = X_test[-num_samples:, :]
    print 'X_test', X_test.shape
    # concatenate X_train and input passed through ae
    ae_op = ae_model.predict(X_test)
    # print 'ae_op', ae_op.shape

    inp = np.concatenate([inp, ae_op], axis=-1)
    print 'inp shape', inp.shape

    # Reshape the data

    pad_len = lstm_time_step - (inp.shape[0] % lstm_time_step)

    # add padding
    _inp_pad = np.zeros(shape=[pad_len, inp.shape[-1]])
    _op_pad = np.zeros(shape=[pad_len, op.shape[-1]])

    inp = np.concatenate([_inp_pad, inp], axis=0)
    op = np.concatenate([_op_pad, op], axis=0)
    inp_dim = inp.shape[-1]
    op_dim = op.shape[-1]

    inp = np.reshape(inp, [-1, lstm_time_step, inp_dim])
    op = np.reshape(op, [-1, lstm_time_step, op_dim])

    num_samples = (inp.shape[0] // batch_size) * batch_size
    inp = inp[-num_samples:, :, :]
    op = op[-num_samples:, :, :]

    # -------- #

    print 'Shape input dimension ', inp.shape
    print 'Shape output dimension ', op.shape

    test_x = inp
    test_y = op
    score = lstm_model.evaluate(x=test_x, y=test_y, batch_size=batch_size)
    print 'Mean Square Error', score[0]
    return score[0]
Example #11
0
 def val_model(self):
     _, exog_val, _, _, end_val, _, _ = data_feeder.get_data_val(True)
     x1, x2, y = self.format_data_xy(exog_val, end_val)
     score = self.model.evaluate([x1, x2], y)
     val_mse = score[0]
     return val_mse