超越出处:用基于模式的抗衡解释查询答案

Zhengjie Miao, Qitian Zeng, Boris Glavic, Sudeepa Roy
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引用次数: 0

摘要

基于来源和干预的技术已被用于解释聚合查询中令人惊讶的高或低结果。然而,这些技术可能会遗漏从非来源数据中产生的有趣解释。例如,某个多产研究人员在某年某地发表的论文数量异常低,可以用同年在另一个地方发表的论文数量增加来解释。我们提出了一种通过反平衡来解释聚合查询中异常值的新方法。也就是说,所解释的异常值与所关注的异常值方向相反。离群值的定义与数据总体上的模式有关。我们提出了挖掘这种聚合回归模式(ARP)的有效方法,讨论了如何使用 ARP 生成解释并对其进行排序,并通过实验证明了我们方法的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Going Beyond Provenance: Explaining Query Answers with Pattern-based Counterbalances.

Going Beyond Provenance: Explaining Query Answers with Pattern-based Counterbalances.

Going Beyond Provenance: Explaining Query Answers with Pattern-based Counterbalances.

Going Beyond Provenance: Explaining Query Answers with Pattern-based Counterbalances.

Provenance and intervention-based techniques have been used to explain surprisingly high or low outcomes of aggregation queries. However, such techniques may miss interesting explanations emerging from data that is not in the provenance. For instance, an unusually low number of publications of a prolific researcher in a certain venue and year can be explained by an increased number of publications in another venue in the same year. We present a novel approach for explaining outliers in aggregation queries through counter-balancing. That is, explanations are outliers in the opposite direction of the outlier of interest. Outliers are defined w.r.t. patterns that hold over the data in aggregate. We present efficient methods for mining such aggregate regression patterns (ARPs), discuss how to use ARPs to generate and rank explanations, and experimentally demonstrate the efficiency and effectiveness of our approach.

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