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I built a LSTM model for text classification using Keras. Now I have new data to be trained. instead of appending to the original data and retrain the model, I thought of training the data using the model weights. i.e. making the weights to get trained with the new data. However, irrespective of the volume i train, the model is not predicting the correct classification (even if i give the same sentence for prediction). What could be the reason? Kindly help me.

  • Hm, maybe your weights are all equal an thus you predict literally anything? – Thomas Lang Nov 26 '18 at 7:51
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Are you using the following to save the trained model?

model.save('model.h5')
model.save_weights('model_weights.h5')

And the following to load it?

from keras.models import load_model
model = load_model('model.h5') # Load the architecture
model = model.load_weights('model_weights.h5') # Set the weights

# train on new data
model.compile...
model.fit...

The model loaded is the exact same as the model being saved here. If you are doing this, then there must be something different in the data (in comparison with what it is trained on).

  • Yes. I saved the model structure and weights and loaded in the above mentioned format. For e.g. I have copied a same sentence 100 times and used those saved weights and structure to train these 100 sentences. Now, when i give the same sentence for prediction, it fails to predict the exact class. That's where I need to know why it is not learning that. – Sarvan Nov 27 '18 at 0:44

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