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Predicting ASR Errors by Exploiting Barge-In Rate of Individual Users for Spoken Dialogue Systems

机译:通过利用单个用户的驳船来预测ASR错误进行口头对话系统

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We exploit the barge-in rate of individual users to predict automatic speech recognition (ASR) errors. A barge-in is a situation in which a user starts speaking during a system prompt, and it can be detected even when ASR results are not reliable. Such features not using ASR results can be a clue for managing a situation in which user utterances cannot be successfully recognized. Since individual users in our system can be identified by their phone numbers, we accumulate how often each user barges in and use this rate as a user profile for determining whether a current "barge-in" utterance should be accepted or not. We furthermore set a window that reflects the temporal transition of the user's behavior as they get accustomed to the system. Experimental results show that setting the window improves the prediction accuracy of whether the utterance should be accepted or not. The experiments also clarify the minimum window width for improving accuracy.
机译:我们利用各个用户的驳船率来预测自动语音识别(ASR)错误。驳船是用户在系统提示期间开始讲话的情况,即使ASR结果不可靠,也可以检测到它。不使用ASR结果的这些特征可以是用于管理不能成功识别用户话语的情况的线索。由于我们系统中的个别用户可以通过他们的电话号码来识别,因此我们累计每个用户驳回每个用户的频率和使用此速率的用户配置文件,以确定是否应该接受当前“驳船”话语。我们还设置了一个窗口,它反映了用户行为的时间转换,因为它们习惯了系统。实验结果表明,设置窗口提高了是否应接受话语的预测准确性。实验还阐明了最小窗口宽度以提高精度。

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