Improving Complex Knowledge Base Question Answering via Question-to-Action and Question-to-Question Alignment

Yechun Tang, Xiaoxia Cheng, Weiming Lu
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引用次数: 2

Abstract

Complex knowledge base question answering can be achieved by converting questions into sequences of predefined actions. However, there is a significant semantic and structural gap between natural language and action sequences, which makes this conversion difficult. In this paper, we introduce an alignment-enhanced complex question answering framework, called ALCQA, which mitigates this gap through question-to-action alignment and question-to-question alignment. We train a question rewriting model to align the question and each action, and utilize a pretrained language model to implicitly align the question and KG artifacts. Moreover, considering that similar questions correspond to similar action sequences, we retrieve top-k similar question-answer pairs at the inference stage through question-to-question alignment and propose a novel reward-guided action sequence selection strategy to select from candidate action sequences. We conduct experiments on CQA and WQSP datasets, and the results show that our approach outperforms state-of-the-art methods and obtains a 9.88% improvements in the F1 metric on CQA dataset. Our source code is available at https://github.com/TTTTTTTTy/ALCQA.
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通过问题到行动和问题到问题对齐改进复杂知识库的问题回答
复杂的知识库问答可以通过将问题转换为预定义的动作序列来实现。然而,在自然语言和动作序列之间存在显著的语义和结构差距,这使得这种转换变得困难。在本文中,我们引入了一个对齐增强的复杂问答框架,称为ALCQA,它通过问题到行动的对齐和问题到问题的对齐来缓解这种差距。我们训练了一个问题重写模型来对齐问题和每个动作,并利用预训练的语言模型来隐式对齐问题和KG工件。此外,考虑到相似的问题对应相似的动作序列,我们在推理阶段通过问题对问题对齐来检索top-k个相似的问答对,并提出了一种新的奖励引导的动作序列选择策略来从候选动作序列中进行选择。我们在CQA和WQSP数据集上进行了实验,结果表明我们的方法优于目前最先进的方法,在CQA数据集上的F1度量提高了9.88%。我们的源代码可从https://github.com/TTTTTTTTy/ALCQA获得。
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