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Provenance Summaries for Answers and Non-Answers

机译:答案和不回答的出处摘要

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Explaining why an answer is (not) in the result, of a query has proven to be of immense importance for many applications. However, why-not provenance, and to a lesser degree also why-provenance, can be very large, even for small input datasets. The resulting scalability and usability issues have limited the applicability of provenance. We present PUG, a system for why and why-not provenance that applies a range of novel techniques to overcome these challenges. Specifically, PUG limits provenance capture to what is relevant to explain a (missing) result of interest and uses an efficient sampling-based summarization method to produce compact explanations for (missing) answers. Using two real-world datasets, we demonstrate how a. user can draw meaningful insights from explanations produced by PUG.
机译:解释了为什么在查询结果中没有答案的事实对许多应用程序来说具有极其重要的意义。但是,即使不是很小的输入数据集,为什么不出处以及在较小程度上也可以为什么出处可能很大。随之而来的可伸缩性和可用性问题限制了来源的适用性。我们介绍了PUG,这是一个用于说明为什么和为什么不出处的系统,该系统应用了一系列新颖的技术来克服这些挑战。具体而言,PUG将来源捕获限制为与解释感兴趣(缺失)结果相关的内容,并使用有效的基于采样的汇总方法来为(缺失)答案提供紧凑的解释。使用两个真实世界的数据集,我们演示了如何。用户可以从PUG的解释中得出有意义的见解。

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