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Disfluent but effective? A quantitative study of disfluencies and conversational moves in team discourse

机译:没用但有效吗?团队话语中流离失所和对话动作的定量研究

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Situated dialogue systems that interact with humans as part of a team (e.g., robot teammates) need to be able to use information from communication channels to gauge the coordination level and effectiveness of the team. Currently, the feasibility of this end goal is limited by several gaps in both the empirical and computational literature. The purpose of this paper is to address those gaps in the following ways: (1) investigate which properties of task-oriented discourse correspond with effective performance in human teams, and (2) discuss how and to what extent these properties can be utilized in spoken dialogue systems. To this end, we analyzed natural language data from a unique corpus of spontaneous, task-oriented dialogue (CReST corpus), which was annotated for disfluencies and conversational moves. We found that effective teams made more self-repair disfluencies and used specific communication strategies to facilitate grounding and coordination. Our results indicate that truly robust and natural dialogue systems will need to interpret highly disfluent utterances and also utilize specific collaborative mechanisms to facilitate grounding. These data shed light on effective communication in performance scenarios and directly inform the development of robust dialogue systems for situated artificial agents.
机译:与团队(例如,机器人队友)中的人进行交互的定位对话系统需要能够使用来自交流渠道的信息来衡量团队的协调水平和有效性。当前,该最终目标的可行性受到经验和计算文献中的几个空白的限制。本文的目的是通过以下方式解决这些差距:(1)研究面向任务的话语的哪些属性与团队中的有效绩效相对应;(2)讨论如何以及在何种程度上利用这些属性口语对话系统。为此,我们分析了自发的,面向任务的自发对话的唯一语料库(CReST语料库)的自然语言数据,该语料库被标记为有歧义和会话动作。我们发现,有效的团队会造成更多的自我修复问题,并使用特定的沟通策略来促进基础和协调。我们的结果表明,真正健壮和自然的对话系统将需要解释高度不满的话语,并且还需要利用特定的协作机制来促进扎根。这些数据揭示了绩效情景中的有效交流,并直接为健在的人工代理提供了健壮的对话系统。

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