作者
Tim Cooijmans, Nicolas Ballas, César Laurent, Çağlar Gülçehre, Aaron Courville
发表日期
2016/3/30
期刊
arXiv preprint arXiv:1603.09025
简介
We propose a reparameterization of LSTM that brings the benefits of batch normalization to recurrent neural networks. Whereas previous works only apply batch normalization to the input-to-hidden transformation of RNNs, we demonstrate that it is both possible and beneficial to batch-normalize the hidden-to-hidden transition, thereby reducing internal covariate shift between time steps. We evaluate our proposal on various sequential problems such as sequence classification, language modeling and question answering. Our empirical results show that our batch-normalized LSTM consistently leads to faster convergence and improved generalization.
引用总数
201620172018201920202021202220232024266981907155474015
学术搜索中的文章
T Cooijmans, N Ballas, C Laurent, Ç Gülçehre… - arXiv preprint arXiv:1603.09025, 2016