使用词语混淆网络的辨别性口语理解

Matthew Henderson, Milica Gasic, Blaise Thomson, P. Tsiakoulis, Kai Yu, S. Young
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引用次数: 116

摘要

目前的商业对话系统通常使用手工编写的口语理解语法(SLU),它根据语音识别器输出的最上面的一两个假设进行操作。这些系统的开发成本很高,而且当遇到识别错误时,它们的性能会显著下降。本文提出了一种鲁棒的SLU方法,该方法基于以混淆词网络形式编码的识别假设的完全后验分布提取的特征。根据[1],系统使用运行在n-gram特征上的SVM分类器,在未对齐的输入/输出对上进行训练。性能在离线语料库和在线实时用户试用中进行评估。研究表明,基于全后验ASR输出分布的SLU统计判别方法可以在准确性和总体对话奖励方面显著提高性能。此外,通过结合以前系统输出的特征可以获得额外的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative spoken language understanding using word confusion networks
Current commercial dialogue systems typically use hand-crafted grammars for Spoken Language Understanding (SLU) operating on the top one or two hypotheses output by the speech recogniser. These systems are expensive to develop and they suffer from significant degradation in performance when faced with recognition errors. This paper presents a robust method for SLU based on features extracted from the full posterior distribution of recognition hypotheses encoded in the form of word confusion networks. Following [1], the system uses SVM classifiers operating on n-gram features, trained on unaligned input/output pairs. Performance is evaluated on both an off-line corpus and on-line in a live user trial. It is shown that a statistical discriminative approach to SLU operating on the full posterior ASR output distribution can substantially improve performance both in terms of accuracy and overall dialogue reward. Furthermore, additional gains can be obtained by incorporating features from the previous system output.
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