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Miscommunication handling in spoken dialog systems based on error-aware dialog state detection

机译:基于错误感知对话框状态检测的口语对话系统中的通信错误处理

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With the exponential growth in computing power and progress in speech recognition technology, spoken dialog systems (SDSs) with which a user interacts through natural speech has been widely used in human-computer interaction. However, error-prone automatic speech recognition (ASR) results usually lead to inappropriate semantic interpretation so that miscommunication happens easily. This paper presents an approach to error-aware dialog state ( DS ) detection for robust miscommunication handling in an SDS. Non-understanding ( Non-U ) and misunderstanding ( Mis-U ) are considered for miscommunication handling in this study. First, understanding evidence (UE), derived from the recognition confidence, is adopted for Non-U detection followed by Non-U recovery. For Mis-U with the recognized sentence containing uncertain recognized words, the partial sentences obtained by removing potentially misrecognized words from the input utterance are organized, based on regular expressions, as a tree structure to tolerate the deletion or rejection of keywords resulting from misrecognition for Mis-U DS modeling. Latent semantic analysis is then employed to consider the verified words and their n -grams for DS detection, including Mis-U and predefined Base DSs. Historical information-based n -grams are employed to find the most likely DS for the SDS. Several experiments were performed with a dialog corpus for the restaurant reservation task. The experimental results show that the proposed approach achieved a promising performance for Non-U recovery and Mis-U repair as well as a satisfactory task success rate for the dialogs using the proposed method.
机译:随着计算能力的指数增长和语音识别技术的进步,与用户通过自然语音进行交互的口头对话系统(SDS)已广泛用于人机交互。但是,容易出错的自动语音识别(ASR)结果通常会导致不恰当的语义解释,从而容易发生误传。本文提出了一种在SDS中进行错误感知对话状态(DS)检测的方法,以进行健壮的误通信处理。在本研究中,将误解(Non-U)和误解(Mis-U)用于误解处理。首先,将基于识别置信度的理解证据(UE)用于非U检测,然后再进行非U恢复。对于Mis-U,其中识别语句包含不确定的识别词,通过基于正则表达式将通过从输入话语中删除潜在的错误识别词而获得的部分语句组织为树形结构,以容忍由于错误识别而导致关键字的删除或拒绝。 Mis-U DS建模。然后采用潜在语义分析来考虑用于DS检测的已验证单词及其n-gram,包括Mis-U和预定义的基本DS。基于历史信息的n-gram用于查找SDS的最可能DS。使用对话语料库进行了一些餐厅预订任务的实验。实验结果表明,所提出的方法在非U恢复和Mis-U修复方面具有令人满意的性能,并且使用所提出的方法可以使对话的任务成功率令人满意。

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