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Post-dialogue recognition confidence scoring for improving statistical language models using untranscribed dialogue data

机译:对话后识别置信度评分,可使用未转录的对话数据改善统计语言模型

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This paper presents a new recognition confidence scoring method, which is used for selecting speech recognition results of untranscribed user utterances. The selected recognition results can be used for training statistical language models of speech recognizers in spoken dialogue systems. The method uses features that can only be obtained after the dialogue session, in addition to such features as the acoustic scores of recognition results. Experimental results showed that the proposed confidence scoring improves correct/incorrect classification of recognition results and that using the language models obtained through our approach results in higher recognition accuracy in speech recognition than those achieved by conventional methods.
机译:本文提出了一种新的识别置信度评分方法,该方法用于选择未转录用户话语的语音识别结果。所选的识别结果可用于训练口语对话系统中语音识别器的统计语言模型。除了诸如识别结果的声学分数之类的特征之外,该方法还使用仅在对话会话之后才能获得的特征。实验结果表明,所提出的置信度评分可以改善识别结果的正确/不正确分类,并且使用通过我们的方法获得的语言模型可以比传统方法获得更高的语音识别识别精度。

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