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DETECTING OFF-TASK SPEECH

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by Wei Chen
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BibTeX

@MISC{Chen_detectingoff-task,
    author = {Wei Chen},
    title = {DETECTING OFF-TASK SPEECH},
    year = {}
}

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Abstract

Off-task speech is speech that strays away from an intended task. It occurs in many dialog applications, such as intelligent tutors, virtual games, health communication systems and humanrobot cooperation. Off-task speech input to computers presents both challenges and opportunities for such dialog systems. On the one hand, off-task speech contains informal conversational style and potentially unbounded scope that hamper accurate speech recognition. On the other hand, an automated agent capable of detecting off-task speech could track users’ attention and thereby maintain the intended conversation by bringing a user back on task; also, knowledge of where off-task speech events are likely to occur can help the analysis of automatic speech recognition (ASR) errors. Related work has been done in confidence measures for dialog systems and detecting out-of-domain utterances. However, there is a lack of systematic study on the type of off-task speech being detected and generality of features capturing off-task speech. In addition, we know of no published research on detecting off-task speech in children’s interactions with an automated agent. The goal of this research is to fill in these blanks to provide a systematic study of off-task speech, with an emphasis on child-machine interactions. To characterize off-task speech quantitatively, we used acoustic features to capture its

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