QPlain:按解释查询

Daniel Deutch, Amir Gilad
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引用次数: 22

摘要

为了帮助非专业人员制定数据库查询,已经提出了从一组输入和输出示例中自动推断查询的多个框架。虽然非常有用,但这种方法的缺点是,如果用户只能提供一小部分示例,那么许多本质上不同的查询可能符合条件。我们观察到,关于示例的附加信息,以其解释的形式,对于显着关注合格查询集非常有用。我们建议演示QPlain,这是一个从示例及其解释中学习连接查询的系统。通过利用最近开发的数据来源模型,我们捕获了不同粒度和细节级别的解释。解释通过直观的界面提供,编译到适当的来源模型,然后用于派生建议的查询。我们将证明,对于非专业人员来说,提供具有有意义解释的示例是可行的,并且这种解释的存在会导致更集中的查询集,从而更好地匹配用户意图。
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QPlain: Query by explanation
To assist non-specialists in formulating database queries, multiple frameworks that automatically infer queries from a set of input and output examples have been proposed. While highly useful, a shortcoming of the approach is that if users can only provide a small set of examples, many inherently different queries may qualify. We observe that additional information about the examples, in the form of their explanations, is useful in significantly focusing the set of qualifying queries. We propose to demonstrate QPlain, a system that learns conjunctive queries from examples and their explanations. We capture explanations of different levels of granularity and detail, by leveraging recently developed models for data provenance. Explanations are fed through an intuitive interface, are compiled to the appropriate provenance model, and are then used to derive proposed queries. We will demonstrate that it is feasible for non-specialists to provide examples with meaningful explanations, and that the presence of such explanations result in a much more focused set of queries which better match user intentions.
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