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Dilated Recurrent Neural Networks

Authors :
Chang, Shiyu
Zhang, Yang
Han, Wei
Yu, Mo
Guo, Xiaoxiao
Tan, Wei
Cui, Xiaodong
Witbrock, Michael
Hasegawa-Johnson, Mark
Huang, Thomas S.
Publication Year :
2017

Abstract

Learning with recurrent neural networks (RNNs) on long sequences is a notoriously difficult task. There are three major challenges: 1) complex dependencies, 2) vanishing and exploding gradients, and 3) efficient parallelization. In this paper, we introduce a simple yet effective RNN connection structure, the DilatedRNN, which simultaneously tackles all of these challenges. The proposed architecture is characterized by multi-resolution dilated recurrent skip connections and can be combined flexibly with diverse RNN cells. Moreover, the DilatedRNN reduces the number of parameters needed and enhances training efficiency significantly, while matching state-of-the-art performance (even with standard RNN cells) in tasks involving very long-term dependencies. To provide a theory-based quantification of the architecture's advantages, we introduce a memory capacity measure, the mean recurrent length, which is more suitable for RNNs with long skip connections than existing measures. We rigorously prove the advantages of the DilatedRNN over other recurrent neural architectures. The code for our method is publicly available at https://github.com/code-terminator/DilatedRNN<br />Comment: Accepted by NIPS 2017

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1710.02224
Document Type :
Working Paper