Towards Computing a Near-Maximum Weighted Independent Set on Massive Graphs

Jiewei Gu, Weiguo Zheng, Yuzheng Cai, Peng Peng
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引用次数: 5

Abstract

The vertices in many graphs are weighted unequally in real scenarios, but the previous studies on the maximum independent set (MIS) ignore the weights of vertices. Therefore, the weight of an MIS may not necessarily be the largest. In this paper, we study the problem of maximum weighted independent set (MWIS) that is defined as the set of independent vertices with the largest weight. Since it is intractable to deliver the exact solution for large graphs, we design a reducing and tie-breaking framework to compute a near-maximum weighted independent set. The reduction rules are critical to reduce the search space for both exact and greedy algorithms as they determine the vertices that are definitely (or not) in the MWIS while preserving the correctness of solutions. We devise a set of novel reductions including low-degree reductions and high-degree reductions for general weighted graphs. Extensive experimental studies over real graphs confirm that our proposed method outperforms the state-of-the-arts significantly in terms of both effectiveness and efficiency.
计算海量图上的近极大加权独立集
在实际场景中,许多图中顶点的权重是不相等的,但以往关于最大独立集的研究忽略了顶点的权重。因此,一个管理信息系统的权重不一定是最大的。本文研究了最大权重独立集(MWIS)的问题,即权重最大的独立顶点的集合。由于很难给出大图的精确解,我们设计了一个简化和打破捆绑的框架来计算近最大加权独立集。约简规则对于减少精确算法和贪婪算法的搜索空间至关重要,因为它们确定了在MWIS中确定(或不确定)的顶点,同时保持了解决方案的正确性。我们设计了一组新的约简,包括一般加权图的低度约简和高度约简。在真实图上进行的大量实验研究证实,我们提出的方法在有效性和效率方面都明显优于最先进的方法。
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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