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Multi-Task Learning with Multi-View Attention for Answer Selection and Knowledge Base Question Answering

机译:多任务学习与多视图注意答案选择和知识库问题应答

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Answer selection and knowledge base question answering (KBQA) are two important tasks of question answering (QA) systems. Existing methods solve these two tasks separately, which requires large number of repetitive work and neglects the rich correlation information between tasks. In this paper, we tackle answer selection and KBQA tasks simultaneously via multi-task learning (MTL), motivated by the following motivations. First, both answer selection and KBQA can be regarded as a ranking problem, with one at text-level while the other at knowledge-level. Second, these two tasks can benefit each other: answer selection can incorporate the external knowledge from knowledge base (KB), while KBQA can be improved by learning contextual information from answer selection. To fulfill the goal of jointly learning these two tasks, we propose a novel multi-task learning scheme that utilizes multi-view attention learned from various perspectives to enable these tasks to interact with each other as well as learn more comprehensive sentence representations. The experiments conducted on several real-world datasets demonstrate the effectiveness of the proposed method, and the performance of answer selection and KBQA is improved. Also, the multi-view attention scheme is proved to be effective in assembling attentive information from different representational perspectives.
机译:答案选择和知识库问题应答(KBQA)是问题应答(QA)系统的两个重要任务。现有方法分别解决这两个任务,这需要大量重复工作并忽略任务之间丰富的相关信息。在本文中,我们通过多任务学习(MTL)同时解决答案选择和KBQA任务,由以下动机激励。首先,答案选择和kbqa都可以被视为排名问题,一个在文本级别,而另一个在知识级别。其次,这两个任务可以互相受益:答案选择可以从知识库(KB)中包含外部知识,而通过从答案选择学习上下文信息,可以提高KBQA。为了满足联合学习这两个任务的目标,我们提出了一种新的多任务学习方案,该方案利用了从各种角度获取的多视图注意力,使这些任务能够互相交互,以及了解更多综合句子表示。在若干现实世界数据集上进行的实验证明了所提出的方法的有效性,并改善了答案选择和KBQ的性能。此外,证明了多视图关注方案有效地组装来自不同代表性观点的细节信息。

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