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A Co-Attentive Cross-Lingual Neural Model for Dialogue Breakdown Detection

机译:对话击穿检测共关节交叉舌神经模型

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Ensuring smooth communication is essential in a chat-oriented dialogue system, so that a user can obtain meaningful responses through interactions with the system. Most prior work on dialogue research does not focus on preventing dialogue breakdown. One of the major challenges is that a dialogue system may generate an undesired utterance leading to a dialogue breakdown, which degrades the overall interaction quality. Hence, it is crucial for a machine to detect dialogue breakdowns in an ongoing conversation. In this paper, we propose a novel dialogue breakdown detection model that jointly incorporates a pretrained cross-lingual language model and a co-attention network. Our proposed model leverages effective word embeddings trained on one hundred different languages to generate contextualized representations. Co-attention aims to capture the interaction between the latest utterance and the conversation history, and thereby determines whether the latest utterance causes a dialogue breakdown. Experimental results show that our proposed model outperforms all previous approaches on all evaluation metrics in both the Japanese and English tracks in Dialogue Breakdown Detection Challenge 4 (DBDC4 at IWSDS2019).
机译:确保顺畅的通信在面向聊天的对话系统中是必不可少的,使得用户可以通过与系统的交互获得有意义的响应。大多数关于对话研究的工作并非专注于防止对话细分。其中一个主要挑战是,对话系统可能会产生不希望的话语,导致对话崩溃,这降低了整体互动质量。因此,在正在进行的对话中检测对话故障是至关重要的。在本文中,我们提出了一种新的对话击穿检测模型,该检测模型共同融合了预先磨削的交叉语言模型和共同关注网络。我们所提出的模型利用有效的单词嵌入在一百种不同的语言上培训以生成上下文化表示。共同关注旨在捕捉最新话语与对话历史之间的相互作用,从而确定最新话语是否会导致对话崩溃。实验结果表明,我们提出的模型在对话崩溃检测挑战4(IWSDS2019的DBDC4)中,我们拟议的模型在日语和英语轨道上的所有评估指标上的所有方法都优于所有评价度量。

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