Beispiel #1
0
def run_network(model=None,
                data=None,
                data_file='df_dh.csv',
                isload_model=False,
                testonly=False):
    epochs = 3
    path_to_dataset = data_file
    sequence_length = SEQ_LENGTH

    if data is None:

        X_train, y_train, X_test, y_test, X_val, Y_val = get_data(
            sequence_length=sequence_length,
            stateful=STATEFUL,
            path_to_dataset=data_file)
    else:
        X_train, y_train, X_test, y_test, X_val, Y_val = data
    print('##################################################################')
    print(X_train[..., 1])
    print(X_test.shape)
    if STATEFUL:
        X_test = X_test[:int(X_test.shape[0] / batch_size) * batch_size]
        y_test = y_test[:int(y_test.shape[0] / batch_size) * batch_size]
    print(X_test.shape)
    print(y_test.shape)
    print(X_test[:, :, 1])

    if model is None:
        model = LSTM2(X_train)
        # print(model.get_config())
        if isload_model == True:
            try:
                model.load_weights("./lstm.h5")
            except Exception as ke:
                print(str(ke))
    if testonly == True:
        predicted = model.predict(X_test, verbose=1, batch_size=batch_size)
        predicted_arr = predicted.T.tolist()
        stat_metrics(X_test, y_test, predicted)
        draw_scatter(predicted_arr[0], y_test, X_test, X_train, y_train,
                     data_file)

        return
    try:
        print("###################### fit ######################")
        early_stop = EarlyStopping(monitor='val_loss', patience=20)
        hist = model.fit(
            X_train,
            y_train,
            batch_size=batch_size,
            # batch_size=512,
            nb_epoch=epochs,
            validation_data=(X_val, Y_val),
            callbacks=[early_stop],
            shuffle=False
            # shuffle=(not STATEFUL)
        )  # , validation_split=0.05)
        print(model.get_config())
        if isload_model: model.save_weights("./lstm.h5")

        predicted = model.predict(X_test, verbose=1, batch_size=batch_size)
        stat_metrics(X_test, y_test, predicted)
    except KeyboardInterrupt as ke:
        print(str(ke))
        return model, y_test, 0
    try:
        predicted_df = pd.DataFrame(predicted)
        y_test_df = pd.DataFrame(y_test)
        # X_test_df = pd.DataFrame(X_test) #columns
        predicted_df.to_csv(DATAPATH + str(prefix) + data_file +
                            str(batch_size) + str(sequence_length) +
                            "predicted_df.csv")
        y_test_df.to_csv(DATAPATH + str(prefix) + data_file + str(batch_size) +
                         str(sequence_length) + "y_test_df.csv")
        # X_test_df.to_csv(DATAPATH+data_file+"X_test_df.csv")
    except Exception as e:
        print("failed save predicted_df")
        raise e
    try:
        print("##############################################")
        print(predicted.shape)
        predicted_arr = predicted.T.tolist()
        # print(predicted_arr)
        draw_scatter(predicted_arr[0], y_test, X_test, X_train, y_train,
                     data_file)
        his_figures(hist)
    except Exception as e:
        print("failed draw picture")
        raise e
    # print('Training duration (s) : ', time.time() - global_start_time)
    return model, y_test, predicted
Beispiel #2
0
def run_regressor(model=LSTM2,
                  sequence_length=SEQ_LENGTH,
                  data=None,
                  data_file='df_dh.csv',
                  isload_model=True,
                  testonly=False):
    epochs = 20000
    path_to_dataset = data_file

    global mses

    if data is None:

        X_train, y_train, X_test, y_test, X_val, Y_val = get_data(
            sequence_length=sequence_length,
            stateful=STATEFUL,
            path_to_dataset=data_file)
    else:
        X_train, y_train, X_test, y_test, X_val, Y_val = data

    if STATEFUL:
        X_test = X_test[:int(X_test.shape[0] / batch_size) * batch_size]
        y_test = y_test[:int(y_test.shape[0] / batch_size) * batch_size]

    estimator = KerasRegressor(build_fn=lambda x=X_train: model(x))

    # if testonly == True:
    #     # predicted = model.predict(X_test, verbose=1,batch_size=batch_size)
    #     prediction = estimator.predict(X_test)

    #     stat_metrics(X_test, y_test, prediction)
    #     draw_scatter(predicted_arr[0], y_test, X_test, X_train, y_train, data_file)
    #     return

    early_stopping = EarlyStopping(monitor='val_loss', verbose=1, patience=40)
    checkpoint = ModelCheckpoint("./lstm.h5",
                                 monitor='val_loss',
                                 verbose=1,
                                 save_best_only=True,
                                 save_weights_only=True)
    ################
    hist = estimator.fit(X_train,
                         y_train,
                         validation_data=(X_val, Y_val),
                         callbacks=[checkpoint],
                         epochs=epochs,
                         batch_size=batch_size,
                         verbose=1)

    # prediction = estimator.predict(X_test)
    score = mean_squared_error(y_test, estimator.predict(X_test))
    estimator_score = estimator.score(X_test, y_test)
    print(score)

    mses.append(score)

    prediction = estimator.predict(X_test)
    print(prediction)
    print(X_test)
    print("##############################################")
    # predicted_arr = prediction.T.tolist()
    # print(predicted_arr)
    global scaler
    prediction_, y_test_, y_train_ = inverse_xy_transform(
        scaler, prediction, y_test, y_train)
    predicted_df = pd.DataFrame(prediction_)
    y_test_df = pd.DataFrame(y_test_)
    # X_test_df = pd.DataFrame(X_test) #columns
    predicted_df.to_csv(DATAPATH + str(prefix) + data_file + str(batch_size) +
                        str(sequence_length) + "predicted_df.csv")
    y_test_df.to_csv(DATAPATH + str(prefix) + data_file + str(batch_size) +
                     str(sequence_length) + "y_test_df.csv")
    # X_test_df.to_csv(DATAPATH+data_file+"X_test_df.csv")
    draw_scatter(prediction, y_test, X_test, X_train, y_train, data_file)
    his_figures(hist)

    draw_line(prediction, y_test, X_test, X_train, y_train, data_file)
    return predicted_df, y_test_df
Beispiel #3
0
def run_regressor(model=LSTM2,
                  data=None,
                  data_file='df_dh.csv',
                  isload_model=True,
                  testonly=False):
    epochs = 8000
    path_to_dataset = data_file
    sequence_length = SEQ_LENGTH

    if data is None:

        X_train, y_train, X_test, y_test, X_val, Y_val = get_data(
            sequence_length=sequence_length,
            stateful=STATEFUL,
            path_to_dataset=data_file)
    else:
        X_train, y_train, X_test, y_test, X_val, Y_val = data

    if STATEFUL:
        X_test = X_test[:int(X_test.shape[0] / batch_size) * batch_size]
        y_test = y_test[:int(y_test.shape[0] / batch_size) * batch_size]

    estimator = KerasRegressor(build_fn=lambda x=X_train: model(x))

    # if testonly == True:
    #     # predicted = model.predict(X_test, verbose=1,batch_size=batch_size)
    #     prediction = estimator.predict(X_test)

    #     stat_metrics(X_test, y_test, prediction)
    #     draw_scatter(predicted_arr[0], y_test, X_test, X_train, y_train, data_file)
    #     return

    early_stopping = EarlyStopping(monitor='val_loss', verbose=1, patience=20)
    checkpoint = ModelCheckpoint("./lstm.h5",
                                 monitor='val_loss',
                                 verbose=1,
                                 save_best_only=True,
                                 save_weights_only=True)
    ################
    hist = estimator.fit(X_train,
                         y_train,
                         validation_data=(X_val, Y_val),
                         callbacks=[checkpoint],
                         epochs=epochs,
                         batch_size=batch_size,
                         verbose=1)

    # prediction = estimator.predict(X_test)
    score = mean_squared_error(y_test, estimator.predict(X_test))
    estimator_score = estimator.score(X_test, y_test)
    print(score)

    prediction = estimator.predict(X_test)
    # invert predictions
    prediction_trans = scaler.inverse_transform(prediction)
    X_test_trans = scaler.inverse_transform(X_test)
    y_test_trans = scaler.inverse_transform(y_test)
    X_train_trans = scaler.inverse_transform(X_train)
    y_train_trans = scaler.inverse_transform(y_train)

    print(prediction)
    print(X_test)
    print("##############################################")
    # predicted_arr = prediction.T.tolist()
    # print(predicted_arr)
    draw_scatter(prediction, y_test, X_test, X_train, y_train, data_file)
    his_figures(hist)