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Discovering Neighborhood Pattern Queries by sample answers in knowledge base

机译:通过知识库中的示例答案发现邻域模式查询

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Knowledge bases have shown their effectiveness in facilitating services like Web search and question-answering. Nevertheless, it remains challenging for ordinary users to fully understand the structure of a knowledge base and to issue structural queries. In many cases, users may have a natural language question and also know some popular (but not all) entities as sample answers. In this paper, we study the Reverse top-k Neighborhood Pattern Query problem, with the aim of discovering structural queries of the question based on: (i) the structure of the knowledge base, and (ii) the sample answers of the question. The proposed solution contains two phases: filter and refine. In the filter phase, a search space of candidate queries is systematically explored. The invalid queries whose result sets do not fully cover the sample answers are filtered out. In the refine phase, all surviving queries are verified to ensure that they are sufficiently relevant to the sample answers, with the assumption that the sample answers are more well-known or popular than other entities in the results of relevant queries. Several optimization techniques are proposed to accelerate the refine phrase. For evaluation, we conduct extensive experiments using the DBpedia knowledge base and a set of real-life questions. Empirical results show that our algorithm is able to provide a small set of possible queries, which contains the query matching the user question in natural language.
机译:知识库显示了他们在促进Web搜索和问答等服务方面的有效性。然而,普通用户仍然有挑战性,以完全理解知识库的结构并发布结构查询。在许多情况下,用户可能有自然语言问题,也知道一些流行(但不是全部)实体作为样本答案。在本文中,我们研究了反向Top-K邻域模式查询问题,目的是基于以下问题发现问题的结构查询:(i)知识库的结构,和(ii)问题的示例答案。所提出的溶液含有两阶段:过滤和细化。在过滤阶段,系统探索候选查询的搜索空间。筛选出结果集未完全覆盖样本答案的无效查询。在优化阶段,验证所有幸存的查询,以确保它们与样本答案充分相关,假设样本答案比相关查询结果中的其他实体更众所周知或流行。提出了几种优化技术来加速细化短语。为了评估,我们使用DBPedia知识库和一系列现实问题进行广泛的实验。经验结果表明,我们的算法能够提供一小部分可能的查询,其中包含符合自然语言中的用户问题的查询。

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