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Question Answering Over Knowledge Graphs: Question Understanding Via Template Decomposition

机译:问题回答知识图表:通过模板分解的问题理解

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The gap between unstructured natural language and structured data makes it challenging to build a system that supports using natural language to query large knowledge graphs. Many existing methods construct a structured query for the input question based on a syntactic parser. Once the input question is parsed incorrectly, a false structured query will bo generated, which may result in false or incomplete answers. The problem gets worse especially for complex questions. In this paper, we propose a novel systematic method to understand natural language questions by using a large number of binary templates rather than semantic parsers. As sufficient templates are critical in the procedure, we present a low-cost approach that can build a huge number of templates automatically. To reduce the search space, we carefully devise an index to facilitate the online template decomposition. Moreover, we design effective strategies to perform the two-level disambiguations (i.e., entity-level ambiguity and structure-level ambiguity) by considering the query semantics. Extensive experiments over several benchmarks demonstrate that our proposed approach is effective as it significantly outperforms state-of-the-art methods in terms of both precision and recall.
机译:非结构化自然语言和结构化数据之间的差距使得构建一个支持使用自然语言来查询大知识图形的系统来挑战。许多现有方法构建基于语法解析器的输入问题的结构化查询。一旦输入问题被错误地解析,将生成错误的结构化查询,这可能会导致错误或不完整的答案。对于复杂的问题,问题变得更糟。在本文中,我们提出了一种新颖的系统方法,通过使用大量二进制模板而不是语义解析器来了解自然语言问题。由于足够的模板在程序中至关重要,我们提出了一种低成本的方法,可以自动构建大量模板。要减少搜索空间,我们仔细设计了一个索引,以方便在线模板分解。此外,我们通过考虑查询语义设计有效的策略来执行两级歧义(即实体级模糊和结构级别歧义)。在几个基准测试中进行了广泛的实验表明,我们所提出的方法是有效的,因为它在精确和召回方面显着优于最先进的方法。

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