Relating RNN Layers with the Spectral WFA Ranks in Sequence Modelling

F. F. Liza, M. Grzes
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引用次数: 7

Abstract

We analyse Recurrent Neural Networks (RNNs) to understand the significance of multiple LSTM layers. We argue that the Weighted Finite-state Automata (WFA) trained using a spectral learning algorithm are helpful to analyse RNNs. Our results suggest that multiple LSTM layers in RNNs help learning distributed hidden states, but have a smaller impact on the ability to learn long-term dependencies. The analysis is based on the empirical results, however relevant theory (whenever possible) was discussed to justify and support our conclusions.
序列建模中RNN层与谱WFA秩的关联
我们分析了递归神经网络(rnn)来理解多个LSTM层的意义。我们认为使用谱学习算法训练的加权有限状态自动机(WFA)有助于分析rnn。我们的研究结果表明,rnn中的多个LSTM层有助于学习分布式隐藏状态,但对学习长期依赖关系的能力影响较小。分析是基于实证结果,但相关的理论(只要可能)讨论来证明和支持我们的结论。
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