会话式开放域问答的动态图推理

Yongqi Li, Wenjie Li, Liqiang Nie
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引用次数: 17

摘要

近年来,会话智能体为人们日常生活中获取有用信息提供了一种自然而便捷的途径,同时也带来了一个广泛而新颖的研究课题——会话问答。在会话式质量保证的基础上,我们研究了会话式开放域质量保证问题,即用户的信息需求以会话形式呈现,需要从Web中提取准确的答案。尽管具有重要的意义和价值,但由于以下挑战,构建一个有效的会话开放域QA系统并非易事:(1)基于会话上下文精确理解会话问题;(2)通过捕获会话中的答案依赖和转换流程提取准确的答案;(3)将问题理解与答案提取深度融合。为了解决上述问题,我们提出了一种会话开放域QA(简称DGRCoQA)的端到端动态图推理方法。DGRCoQA由三个组件组成,即一个动态问题解释器(DQI)、一个图形推理增强检索器(GRR)和一个典型的Reader,其中第一个用于理解和制定会话问题,而另外两个负责从Web提取准确的答案。特别是,DQI通过利用QA上下文(从Reader返回的预测答案中获取)来理解会话问题,从而动态地关注会话上下文中最相关的信息。然后,GRR尝试捕获答案流,并通过在动态构建的上下文图上推理答案路径来选择包含答案的最可能的通道。最后,Reader,一个阅读理解模型,从选定的段落中预测一个文本跨度作为答案。在对基准数据集进行的大量实验中,DGRCoQA证明了它的优势。它明显优于现有的方法,达到了最先进的性能。
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Dynamic Graph Reasoning for Conversational Open-Domain Question Answering
In recent years, conversational agents have provided a natural and convenient access to useful information in people’s daily life, along with a broad and new research topic, conversational question answering (QA). On the shoulders of conversational QA, we study the conversational open-domain QA problem, where users’ information needs are presented in a conversation and exact answers are required to extract from the Web. Despite its significance and value, building an effective conversational open-domain QA system is non-trivial due to the following challenges: (1) precisely understand conversational questions based on the conversation context; (2) extract exact answers by capturing the answer dependency and transition flow in a conversation; and (3) deeply integrate question understanding and answer extraction. To address the aforementioned issues, we propose an end-to-end Dynamic Graph Reasoning approach to Conversational open-domain QA (DGRCoQA for short). DGRCoQA comprises three components, i.e., a dynamic question interpreter (DQI), a graph reasoning enhanced retriever (GRR), and a typical Reader, where the first one is developed to understand and formulate conversational questions while the other two are responsible to extract an exact answer from the Web. In particular, DQI understands conversational questions by utilizing the QA context, sourcing from predicted answers returned by the Reader, to dynamically attend to the most relevant information in the conversation context. Afterwards, GRR attempts to capture the answer flow and select the most possible passage that contains the answer by reasoning answer paths over a dynamically constructed context graph. Finally, the Reader, a reading comprehension model, predicts a text span from the selected passage as the answer. DGRCoQA demonstrates its strength in the extensive experiments conducted on a benchmark dataset. It significantly outperforms the existing methods and achieves the state-of-the-art performance.
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