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A neural knowledge graph evaluator: Combining structural and semantic evidence of knowledge graphs for predicting supportive knowledge in scientific QA

机译:神经知识图表评估:结合知识图表的结构和语义证据来预测科学QA的支持性知识

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摘要

Effectively detecting supportive knowledge of answers is a fundamental step towards automated question answering. While pre-trained semantic vectors for texts have enabled semantic computation for background-answer pairs, they are limited in representing structured knowledge relevant for question answering. Recent studies have shown interests in enrolling structured knowledge graphs for text processing, however, their focus was more on semantics than on graph structure. This study, by contrast, takes a special interest in exploring the structural patterns of knowledge graphs. Inspired by human cognitive processes, we propose novel methods of feature extraction for capturing the local and global structural information of knowledge graphs. These features not only exhibit good indicative power, but can also facilitate text analysis with explainable meanings. Moreover, aiming to better combine structural and semantic evidence for prediction, we propose a Neural Knowledge Graph Evaluator (NKGE) which showed superior performance over existing methods. Our contributions include a novel set of interpretable structural features and the effective NKGE for compatibility evaluation between knowledge graphs. The methods of feature extraction and the structural patterns indicated by the features may also provide insights for related studies in computational modeling and processing of knowledge.
机译:有效地检测答案的支持知识是对自动问题应答的基本步骤。虽然用于文本的预先训练的语义向量已经启用了背景答案对的语义计算,但它们有限于代表与问题应答相关的结构化知识。最近的研究表明,注册结构化知识图表的兴趣是文本处理的兴趣,它们的焦点更多地在语义上比图形结构更多。相比之下,这项研究对知识图表的结构模式进行了特别兴趣。灵感来自人类认知过程,我们提出了新的特征提取方法,用于捕获知识图表的本地和全球结构信息。这些功能不仅表现出良好的指示力,而且还可以通过可解释的含义来促进文本分析。此外,旨在更好地结合结构和语义证据进行预测,我们提出了一种神经知识图表评估器(NKGE),其对现有方法具有卓越的性能。我们的贡献包括一组新颖的可解释结构特征,以及知识图之间的兼容性评估的有效题。特征提取的方法和特征所示的结构模式也可以提供对计算建模和知识处理中相关研究的见解。

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