k-Regret Minimizing Set: Efficient Algorithms and Hardness

Wei Cao, J. Li, Haitao Wang, Kangning Wang, Ruosong Wang, R. C. Wong, Wei Zhan
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引用次数: 32

Abstract

We study the k-regret minimizing query (k-RMS), which is a useful operator for supporting multi-criteria decision-making. Given two integers k and r, a k-RMS returns r tuples from the database which minimize the k-regret ratio, defined as one minus the worst ratio between the k-th maximum utility score among all tuples in the database and the maximum utility score of the r tuples returned. A solution set contains only r tuples, enjoying the benefits of both top-k queries and skyline queries. Proposed in 2012, the query has been studied extensively in recent years. In this paper, we advance the theory and the practice of k-RMS in the following aspects. First, we develop efficient algorithms for k-RMS (and its decision version) when the dimensionality is 2. The running time of our algorithms outperforms those of previous ones. Second, we show that k-RMS is NP-hard even when the dimensionality is 3. This provides a complete characterization of the complexity of k-RMS, and answers an open question in previous studies. In addition, we present approximation algorithms for the problem when the dimensionality is 3 or larger.
k-遗憾最小化集:高效算法和硬度
我们研究了k-遗憾最小化查询(k-RMS),它是支持多准则决策的有用算子。给定两个整数k和r, k- rms从数据库返回r个最小k-后悔比率的元组,定义为1减去数据库中所有元组中第k个最大效用得分与返回的r个元组的最大效用得分之间的最差比率。一个解决方案集只包含r个元组,可以同时享受top-k查询和skyline查询的好处。该查询于2012年提出,近年来得到了广泛的研究。本文从以下几个方面提出了k-RMS的理论和实践。首先,当维数为2时,我们开发了k-RMS(及其决策版本)的有效算法。我们的算法的运行时间优于以前的算法。其次,我们证明了即使维度为3,k-RMS也是np困难的。这为k-RMS的复杂性提供了一个完整的表征,并回答了以前研究中的一个开放性问题。此外,我们还提出了维数为3或更大的问题的近似算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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