Encoding Word Confusion Networks with Recurrent Neural Networks for Dialog State TrackingOpen Website

2017 (modified: 16 Jul 2019)SCNLP@EMNLP 2017 2017Readers: Everyone
Abstract: This paper presents our novel method to encode word confusion networks, which can represent a rich hypothesis space of automatic speech recognition systems, via recurrent neural networks. We demonstrate the utility of our approach for the task of dialog state tracking in spoken dialog systems that relies on automatic speech recognition output. Encoding confusion networks outperforms encoding the best hypothesis of the automatic speech recognition in a neural system for dialog state tracking on the well-known second Dialog State Tracking Challenge dataset.
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