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RuKBC-QA: A Framework for Question Answering over Incomplete KBs Enhanced with Rules Injection

机译:Rukbc-QA:用规则注射增强了不完整的KBS的问题框架

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The incompleteness of the knowledge base (KB) is one of the key issues when answering natural language questions over an incomplete knowledge base (KB-QA). To alleviate this problem, a framework, RuKBC-QA, is proposed to integrate methods of rule-based knowledge base completion (KBC) into general QA systems. Three main components are included in our framework, namely, a rule miner that mines logic rules from the KB, a rule selector that selects meaningful rules for QA, and a QA model that aggregates information from the original knowledge base and the selected rules. Experiments on WEBQUES-TIONS dataset indicate that the proposed framework can effectively alleviate issues caused by incompleteness and obtains a significant improvement in terms of micro average Fl score by 2.4% to 4.5% under different incompleteness settings.
机译:知识库(KB)的不完整性是通过不完整知识库(KB-QA)回答自然语言问题时的关键问题之一。为了缓解这一问题,建议将基于规则的知识库完成(KBC)的方法集成到一般QA系统中将方法集成在一起。我们的框架中包含了三个主要组件,即挖掘来自KB的逻辑规则的规则矿工,一个规则选择器,它为QA选择有意义的规则,以及从原始知识库和所选规则中聚合信息的QA模型。 WebQues-Tions数据集的实验表明,所提出的框架可以有效缓解不完整性引起的问题,并在不同的不完整环境下获得显微平均流量的显着改善2.4%至4.5%。

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