Language modeling with highway LSTM

Gakuto Kurata, B. Ramabhadran, G. Saon, A. Sethy
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引用次数: 38

Abstract

Language models (LMs) based on Long Short Term Memory (LSTM) have shown good gains in many automatic speech recognition tasks. In this paper, we extend an LSTM by adding highway networks inside an LSTM and use the resulting Highway LSTM (HW-LSTM) model for language modeling. The added highway networks increase the depth in the time dimension. Since a typical LSTM has two internal states, a memory cell and a hidden state, we compare various types of HW-LSTM by adding highway networks onto the memory cell and/or the hidden state. Experimental results on English broadcast news and conversational telephone speech recognition show that the proposed HW-LSTM LM improves speech recognition accuracy on top of a strong LSTM LM baseline. We report 5.1% and 9.9% on the Switchboard and CallHome subsets of the Hub5 2000 evaluation, which reaches the best performance numbers reported on these tasks to date.
高速LSTM语言建模
基于长短期记忆(LSTM)的语言模型在许多自动语音识别任务中显示出良好的效果。在本文中,我们通过在LSTM中添加高速公路网络来扩展LSTM,并使用所得的高速公路LSTM (HW-LSTM)模型进行语言建模。增加的公路网在时间维度上增加了深度。由于一个典型的LSTM有两个内部状态,一个存储单元和一个隐藏状态,我们通过在存储单元和/或隐藏状态上添加高速公路网络来比较各种类型的HW-LSTM。英语广播新闻和会话电话语音识别的实验结果表明,该方法在强LSTM LM基线的基础上提高了语音识别精度。我们在Hub5 2000评估的Switchboard和CallHome子集上报告了5.1%和9.9%,这达到了迄今为止这些任务报告的最佳性能数字。
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