Code for paper "Full-Capacity Unitary Recurrent Neural Networks." Based on the complex_RNN repository from github.com/amarshah/complex_RNN.
Code coming soon for other experiments.
If you find this code useful, please cite the following references:
[1] M. Arjovsky, A. Shah, and Y. Bengio, “Unitary Evolution Recurrent Neural Networks,” Proc. International Conference on Machine Learning (ICML), 2016, pp. 1120–1128.
[2] S. Wisdom, T. Powers, J.R. Hershey, J. Le Roux, and L. Atlas, "Full-Capacity Unitary Recurrent Neural Networks," Advances in Neural Information Processing Systems (NIPS), 2016.
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Downsample the TIMIT dataset to 8ksamples/sec using Matlab by running
downsample_audio.m
from thematlab
directory. Make sure you modify the paths indownsample_audio.m
for your system. -
Download Matlab evaluation code using
download_and_unzip_matlab_code.py
, which should download and unzip all the required toolboxes to thematlab
folder. -
Run the experiments using the shell scripts:
run_timit_prediction_<model>.sh
, which will train the model and score the resulting audio using the Matlab evaluation toolboxes.