DEC-keras
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How to calculate the clusterig (KLD) loss for every instance
Great work! For the problem I studied, the accuracy reaches 97%, which is very impressive. How can I compute the DEC loss of every instance after the training has been completed. For the autoencoder, it is straightforward by defining a simple function:
def ae_loss(autoencoder, X):
ae_rec = autoencoder.predict(X)
ae_loss = tf.keras.losses.mse(ae_rec, X)
return ae_loss
Defining similar function for computing the clustering loss is not working. Any idea how can this be implemented? I would like to do a further investigation by studying the loss distribution.