17

I'm using a Scikit-Learn custom pipeline (sklearn.pipeline.Pipeline) in conjunction with RandomizedSearchCV for hyper-parameter optimization. This works great.

Now I would like to insert a Keras model as a first step into the pipeline. Parameters of the model should be optimized. The computed (fitted) Keras model should then be used later on in the pipeline by other steps, so I think I have to store the model as a global variable so that the other pipeline steps can use it. Is this right?

I know that Keras offers some wrappers for the Scikit-Learn API but the problem is that these wrappers already do classification / regression but I only want to compute the Keras model and nothing else.

How can this be done?

For example I have a method which returns the model:

def create_model(file_path, argument2,...):
    ...
    return model

The method needs some fixed parameters like a file path etc. but X and y is not needed (or can be ignored). The parameters of the model should be optimized (number of layers etc.).

  • can you explain what you mean by this "computed (fitted) Keras model should then be used later on in the pipeline by other steps"? If the Keras model is the last step, then how is it used later on by other steps? – amanbirs Nov 21 '17 at 20:18
6

You need to wrap your Keras model as a Scikit learn model first, and then just proceed as normal.

Here's a quick example (I've omitted the imports for brevity)

Here is a full blog post with many other examples: Scikit-learn Pipeline Examples

# create a function that returns a model, taking as parameters things you
# want to verify using cross-valdiation and model selection
def create_model(optimizer='adagrad',
                 kernel_initializer='glorot_uniform', 
                 dropout=0.2):
    model = Sequential()
    model.add(Dense(64,activation='relu',kernel_initializer=kernel_initializer))
    model.add(Dropout(dropout))
    model.add(Dense(1,activation='sigmoid',kernel_initializer=kernel_initializer))

    model.compile(loss='binary_crossentropy',optimizer=optimizer, metrics=['accuracy'])

    return model

# wrap the model using the function you created
clf = KerasRegressor(build_fn=create_model,verbose=0)

# just create the pipeline
pipeline = Pipeline([
    ('clf',clf)
])

pipeline.fit(X_train, y_train)
  • in the keras model, there is no "input_dim" parameter. Is it a typing mistake? – Abdul Karim Khan Feb 14 '18 at 6:51
  • 1
    This param_grid appears to be input to a grid or random search, but doesn't set_params only set the params without searching (hence there can't be a list for, eg, epochs)? – user0 May 28 '18 at 22:27
1

This is a modification of the RBM example in sklearn documentation (http://scikit-learn.org/stable/auto_examples/neural_networks/plot_rbm_logistic_classification.html#sphx-glr-auto-examples-neural-networks-plot-rbm-logistic-classification-py)

but the neural network implemented in keras with tensorflow backend

    # -*- coding: utf-8 -*-
    """
    Created on Mon Nov 27 17:11:21 2017

    @author: ZED
    """

    from __future__ import print_function

    print(__doc__)

    # Authors: Yann N. Dauphin, Vlad Niculae, Gabriel Synnaeve
    # License: BSD

    import numpy as np
    import matplotlib.pyplot as plt

    from scipy.ndimage import convolve

    from keras.models import Sequential
    from keras.layers.core import Dense,Activation
    from keras.wrappers.scikit_learn import KerasClassifier
    from keras.utils import np_utils

    from sklearn import  datasets, metrics
    from sklearn.model_selection import train_test_split
    from sklearn.neural_network import BernoulliRBM
    from sklearn.pipeline import Pipeline


    #%%
    # Setting up

    def nudge_dataset(X, Y):
        """
        This produces a dataset 5 times bigger than the original one,
        by moving the 8x8 images in X around by 1px to left, right, down, up
        """
        direction_vectors = [
            [[0, 1, 0],
             [0, 0, 0],
             [0, 0, 0]],

            [[0, 0, 0],
             [1, 0, 0],
             [0, 0, 0]],

            [[0, 0, 0],
             [0, 0, 1],
             [0, 0, 0]],

            [[0, 0, 0],
             [0, 0, 0],
             [0, 1, 0]]]

        shift = lambda x, w: convolve(x.reshape((8, 8)), mode='constant',
                                      weights=w).ravel()
        X = np.concatenate([X] +
                           [np.apply_along_axis(shift, 1, X, vector)
                            for vector in direction_vectors])
        Y = np.concatenate([Y for _ in range(5)], axis=0)
        return X, Y

    # Load Data
    digits = datasets.load_digits()
    X = np.asarray(digits.data, 'float32')
    X, Y = nudge_dataset(X, digits.target)
    X = (X - np.min(X, 0)) / (np.max(X, 0) + 0.0001)  # 0-1 scaling

    X_train, X_test, Y_train, Y_test = train_test_split(X, Y,
                                                        test_size=0.2,
                                                        random_state=0)

    #%%
    def create_model():

        model = Sequential()
        model.add(Dense(100, input_dim=64))
        model.add(Activation('tanh'))

        """
        #other layer
        model.add(Dense(500))
        model.add(Activation('tanh'))
        """

        model.add(Dense(10))
        model.add(Activation('softmax'))
        # Compile model
        model.compile(loss = 'binary_crossentropy', optimizer = 'adadelta', metrics=['accuracy'])
        return model

    rbm = BernoulliRBM(random_state=0, verbose=True)

    #This is the model you want. it is in sklearn format
    clf = KerasClassifier(build_fn=create_model, verbose=0)

    classifier = Pipeline(steps=[('rbm', rbm), ('VNN', clf)])

    #%%
    # Training

    # Hyper-parameters. These were set by cross-validation,
    # using a GridSearchCV. Here we are not performing cross-validation to
    # save time.
    rbm.learning_rate = 0.06
    rbm.n_iter = 20
    # More components tend to give better prediction performance, but larger
    # fitting time
    rbm.n_components = 64

    #adapt targets to hot matrix
    yTrain = np_utils.to_categorical(Y_train, 10)
    # Training RBM-Logistic Pipeline
    classifier.fit(X_train, yTrain)

    #%%
    # Evaluation

    print()
    print("NN using RBM features:\n%s\n" % (
        metrics.classification_report(
            Y_test,
            classifier.predict(X_test))))

    #%%
    # Plotting

    plt.figure(figsize=(4.2, 4))
    for i, comp in enumerate(rbm.components_):
        plt.subplot(10, 10, i + 1)
        plt.imshow(comp.reshape((8, 8)), cmap=plt.cm.gray_r,
                   interpolation='nearest')
        plt.xticks(())
        plt.yticks(())
    plt.suptitle('64 components extracted by RBM', fontsize=16)
    plt.subplots_adjust(0.08, 0.02, 0.92, 0.85, 0.08, 0.23)

    plt.show()

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