Response-Based Confidence Annotation for Spoken Dialogue Systems

A. Gruenstein
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引用次数: 10

Abstract

Spoken and multimodal dialogue systems typically make use of confidence scores to choose among (or reject) a speech recognizer's N-best hypotheses for a particular utterance. We argue that it is beneficial to instead choose among a list of candidate system responses. We propose a novel method in which a confidence score for each response is derived from a classifier trained on acoustic and lexical features emitted by the recognizer, as well as features culled from the generation of the candidate response itself. Our response-based method yields statistically significant improvements in F-measure over a baseline in which hypotheses are chosen based on recognition confidence scores only.
基于应答的口语对话系统自信注释
口语和多模态对话系统通常使用置信度分数来选择(或拒绝)语音识别器对特定话语的n个最佳假设。我们认为在候选系统响应列表中进行选择是有益的。我们提出了一种新的方法,其中每个响应的置信度评分来自一个分类器,该分类器训练了由识别器发出的声学和词汇特征,以及从候选响应本身的生成中剔除的特征。我们基于响应的方法在F-measure中产生了统计上显著的改进,而在F-measure中,假设仅基于识别置信度得分来选择。
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