基于知识的对话的生成知识选择

Weiwei Sun, Pengjie Ren, Z. Ren
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引用次数: 4

摘要

知识选择是基于知识的对话(KGD)的关键,它旨在根据对话历史选择合适的知识片段用于话语。先前的研究主要采用分类方法将每个候选片段独立地分类为“相关”或“无关”。然而,这种方法忽略了片段之间的相互作用,导致难以推断片段的含义。此外,他们缺乏对话-知识互动的话语结构模型。我们提出了一种简单而有效的知识选择生成方法,称为GenKS。GenKS通过使用序列到序列模型生成它们的标识符来学习选择片段。因此,GenKS通过注意力机制内在地捕捉知识内部的互动。同时,我们设计了一个超链接机制来显式地建模对话知识交互。我们在三个基准数据集上进行了实验,验证了GenKS在知识选择和响应生成方面都取得了最好的结果。
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Generative Knowledge Selection for Knowledge-Grounded Dialogues
Knowledge selection is the key in knowledge-grounded dialogues (KGD), which aims to select an appropriate knowledge snippet to be used in the utterance based on dialogue history. Previous studies mainly employ the classification approach to classify each candidate snippet as “relevant” or “irrelevant” independently. However, such approaches neglect the interactions between snippets, leading to difficulties in inferring the meaning of snippets. Moreover, they lack modeling of the discourse structure of dialogue-knowledge interactions. We propose a simple yet effective generative approach for knowledge selection, called GenKS. GenKS learns to select snippets by generating their identifiers with a sequence-to-sequence model. GenKS therefore captures intra-knowledge interaction inherently through attention mechanisms. Meanwhile, we devise a hyperlink mechanism to model the dialogue-knowledge interactions explicitly. We conduct experiments on three benchmark datasets, and verify GenKS achieves the best results on both knowledge selection and response generation.
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