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NLProveNAns: Natural Language Provenance for Non-Answers

机译:NLPROVENS:非答案的自然语言来源

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Natural language (NL) interfaces to databases allow users without technical background to query the database and get the results. Users of such systems may be surprised by the absence of certain expected results. To this end, we propose to demonstrate NLProveNAns, a system that allows non-expert users to view explanations for non-answers of interest. The explanations are shown in an intuitive manner, by highlighting parts of the original NL query that are intuitively ''responsible" for the absence of the expected result. Our solution builds upon and combines recent advancements in Natural Language Interfaces to Databases and models for why-not provenance. In particular, the systems can provide explanations in one of two flavors corresponding to two different why-not provenance models: a short explanation based on the frontier picky model, and a detailed explanation based on the why-not polynomial model.
机译:自然语言(NL)对数据库的接口允许用户没有技术背景查询数据库并获取结果。由于没有某些预期结果,这种系统的用户可能会感到惊讶。为此,我们建议展示NLProvens,一个系统允许非专家用户查看对非答复答案的解释。解释以直观的方式示出,通过突出显示原始NL查询的部分,这些原始NL查询是为了缺乏预期的结果而直观地“负责”。我们的解决方案在后台构建并将最近的自然语言界面的进步与为什么的数据库和模型相结合 - 没有出处。特别地,系统可以在对应于两种不同的两个味道之一中提供解释,其两个不同的原因:基于前沿挑剔模型的简短解释,以及基于WhentOmal模型的详细说明。

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