I am a beginner at Deep learning.

I have a multiclass dataset of size m * n where m is the number of sampels and n is the number of features. I want to use a simple autoencoder in kreas to reduce the feature dimensionality. I could only find examples of autoencoder codes for images (MNIST example). And I tried to convert the code to fit my problem. But I don't think it's working. Below is my code

D = pandas.read_csv(data_file)
y = D.ix[:, class_label].values.astype('int32')
X = D.ix[:, 1:].values.astype('float32')
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.33, random_state = 42)
X_train_noisy = X_train + corruption_level * np.random.normal(loc = 0.0, scale = 1.0, size = X_train.shape)       
X_test_noisy = X_test + corruption_level * np.random.normal(loc = 0.0, scale = 1.0, size = X_test.shape)          
X_train_noisy = np.clip(X_train_noisy, 0., 1.)                                   
X_test_noisy = np.clip(X_test_noisy, 0., 1.)
input_data = Input(shape = (n,))
encoded = Dense(5000, activation = 'relu')(input_data)
encoded = Dense(500, activation = 'relu')(encoded)
decoded = Dense(5000, activation = 'relu')(encoded)
decoded = Dense(n, activation = 'sigmoid')(decoded)
autoencoder = Model(input_data, decoded)
autoencoder.compile(optimizer = 'ada', loss = 'binary_crossentropy')
autoencoder.fit(X_train_noisy, X_train, epochs = 10, batch_size = 100, shuffle = True, validation_data = (X_test_noisy, X_test)

I don't think it's working. My loss at each epoch is negative hundreds and sometimes thousands. What am I doing wrong? Is there a problem with the implementation or is it just bad data?

  • Try loss='mean_squared_error' or 'mse'. 'binary_crossentropy' is used for binary classification problem. – hikaru Mar 13 at 1:26

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