Learning to Extract Conditional Knowledge for Question Answering using Dialogue

Pengwei Wang, Lei Ji, Jun Yan, Lianwen Jin, Wei-Ying Ma
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引用次数: 10

Abstract

Knowledge based question answering (KBQA) has attracted much attention from both academia and industry in the field of Artificial Intelligence. However, many existing knowledge bases (KBs) are built by static triples. It is hard to answer user questions with different conditions, which will lead to significant answer variances in questions with similar intent. In this work, we propose to extract conditional knowledge base (CKB) from user question-answer pairs for answering user questions with different conditions through dialogue. Given a subject, we first learn user question patterns and conditions. Then we propose an embedding based co-clustering algorithm to simultaneously group the patterns and conditions by leveraging the answers as supervisor information. After that, we extract the answers to questions conditioned on both question pattern clusters and condition clusters as a CKB. As a result, when users ask a question without clearly specifying the conditions, we use dialogues in natural language to chat with users for question specification and answer retrieval. Experiments on real question answering (QA) data show that the dialogue model using automatically extracted CKB can more accurately answer user questions and significantly improve user satisfaction for questions with missing conditions.
学习提取条件知识,用对话回答问题
基于知识的问答(KBQA)在人工智能领域受到了学术界和工业界的广泛关注。然而,许多现有的知识库(KBs)是由静态三元组构建的。不同条件下的用户问题很难回答,这将导致意图相似的问题的答案差异很大。在这项工作中,我们提出从用户问答对中提取条件知识库(CKB),通过对话的方式回答不同条件下的用户问题。给定一个主题,我们首先学习用户提问的模式和条件。然后,我们提出了一种基于嵌入的共聚类算法,利用答案作为监督信息,同时对模式和条件进行分组。然后,我们将问题模式聚类和条件聚类作为CKB提取问题的答案。因此,当用户在没有明确规定条件的情况下提出问题时,我们使用自然语言的对话与用户聊天,进行问题规范和答案检索。在真实问答(QA)数据上的实验表明,使用自动提取CKB的对话模型可以更准确地回答用户的问题,并显著提高用户对缺失条件问题的满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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