Future Word Contexts in Neural Network Language Models
August 18, 2017 ยท Declared Dead ยท ๐ Automatic Speech Recognition & Understanding
"No code URL or promise found in abstract"
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Authors
Xie Chen, Xunying Liu, Anton Ragni, Yu Wang, Mark Gales
arXiv ID
1708.05592
Category
cs.CL: Computation & Language
Citations
23
Venue
Automatic Speech Recognition & Understanding
Last Checked
4 months ago
Abstract
Recently, bidirectional recurrent network language models (bi-RNNLMs) have been shown to outperform standard, unidirectional, recurrent neural network language models (uni-RNNLMs) on a range of speech recognition tasks. This indicates that future word context information beyond the word history can be useful. However, bi-RNNLMs pose a number of challenges as they make use of the complete previous and future word context information. This impacts both training efficiency and their use within a lattice rescoring framework. In this paper these issues are addressed by proposing a novel neural network structure, succeeding word RNNLMs (su-RNNLMs). Instead of using a recurrent unit to capture the complete future word contexts, a feedforward unit is used to model a finite number of succeeding, future, words. This model can be trained much more efficiently than bi-RNNLMs and can also be used for lattice rescoring. Experimental results on a meeting transcription task (AMI) show the proposed model consistently outperformed uni-RNNLMs and yield only a slight degradation compared to bi-RNNLMs in N-best rescoring. Additionally, performance improvements can be obtained using lattice rescoring and subsequent confusion network decoding.
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