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Clockwork RNN

This project is an implementation of the Clockwork RNN (see paper).

People : Paul Mustière, Pandav2 aka David Panou

Organization : UPMC - Master Data Science

Clockwork-RNN

The model can be found under models/clockwork_rnn.py.

The current main.py replicates the sequence generation task described in the paper, but the implementation should be able to handle other tasks.

To monitor the training, you can use TensorBoard:

tensorboard --reload_interval 2 --logdir log

Results

We ran different sizes of Clockwork RNN as well as LSTMs to compare performance with similar numbers of parameters.

The following table summarizes the results:

Number of parameters Clockwork RNN (MSE) LSTM (MSE)
~70 4.3e-2 1.5e-1
~480 3.4e-3 1.0e-1
~800 1.8e-3 9.3e-2

They were obtained with a learning rate of 0.01 for Clockwork RNN, and 0.001 for LSTM (which was more unstable).

The following graph shows the MSE loss during training:

Graph of loss during training

The following plot shows the generated signal (and the target) for the best performing Clockwork RNN:

Plot of generated signal

Generated signals for other models can be found under results/