主催: 人工知能学会
会議名: 第72回 言語・音声理解と対話処理研究会
回次: 72
開催地: 東京工業大学すずかけ台キャンパス 中会議室およびG3棟1Fエントランス
開催日: 2014/12/15 - 2014/12/16
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When humans attempt to detect deception, they perform two actions: looking for telltale signs of deception, and asking questions to attempt to unveil a deceptive conversational partner. There has been signi cant prior work on automatic deception detection that attempts to learn signs of deception. On the other hand, we focus on the second action, envisioning a dialogue systems that asks questions to attempt to catch a potential liar. In this paper, we describe the results of an initial analysis towards this goal, attempting to make clear which questions make the features of deception more salient. In order to do so, we collect a deceptive corpus in Japanese, our target language, perform an analysis of this corpus comparing with a similar English corpus, and perform an analysis of what kinds of questions result in a higher deception detection accuracy.