Ejemplo n.º 1
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def regression_evaluate(y_test,
                        predict,
                        msg='None'):  # msg: Valence or Arousal

    return continuous_metrics(y_test, predict, 'prediction result:')
Ejemplo n.º 2
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def regression_evaluate(y_test, predict, msg='None'):  # msg: Valence or Arousal

    return continuous_metrics(y_test, predict, 'prediction result:')
Ejemplo n.º 3
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print('Predict value: %s' % str(predict))

submit_predict = model.predict(X_test, batch_size=batch_size).reshape(
    (1, len(X_test)))[0]

pickle.dump((test, submit_predict), open("./tmp/submit_cnn_lstm.p", 'wb'))
exit()
print("Saving model and weights...")
json_string = model.to_json()
open('./tmp/keras_model_architecture.json', 'w').write(json_string)
model.save_weights('./tmp/keras_model_weights.h5', overwrite=True)
print("Model saved.")

from metrics import continuous_metrics

continuous_metrics(Y_test, predict, 'prediction result:')

# visualization
from visualize import draw_linear_regression

X = range(50, 100)  # or range(len(y_test))
draw_linear_regression(X,
                       np.array(Y_test)[X],
                       np.array(predict)[X], 'Sentence Number',
                       "Sentiment scores",
                       'Comparison of predicted and true scores')

from visualize import plot_keras, draw_hist

plot_keras(result, x_labels='Epoch', y_labels='MAE Loss')
draw_hist(np.array(Y_test) - np.array(predict),
Ejemplo n.º 4
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# experiment evaluated by multiple metrics
predict = model.predict(X_test, batch_size=batch_size).reshape((1, len(X_test)))[0]
print('Y_test: %s' % str(Y_test))
print('Predict value: %s' % str(predict))

submit_predict = model.predict(X_test, batch_size=batch_size).reshape((1, len(X_test)))[0]

pickle.dump((test, submit_predict), open("./tmp/submit_cnn_lstm.p", 'wb'))
exit()
print("Saving model and weights...")
json_string = model.to_json()
open('./tmp/keras_model_architecture.json', 'w').write(json_string)
model.save_weights('./tmp/keras_model_weights.h5', overwrite=True)
print("Model saved.")

from metrics import continuous_metrics

continuous_metrics(Y_test, predict, 'prediction result:')

# visualization
from visualize import draw_linear_regression

X = range(50, 100)  # or range(len(y_test))
draw_linear_regression(X, np.array(Y_test)[X], np.array(predict)[X], 'Sentence Number', "Sentiment scores",
                       'Comparison of predicted and true scores')

from visualize import plot_keras, draw_hist

plot_keras(result, x_labels='Epoch', y_labels='MAE Loss')
draw_hist(np.array(Y_test) - np.array(predict), title='Histogram of sentiment scores prediction: ')