Comparison of algorithms for near-optimal dominating sets computation in real-world networks

Martin Nehéz, Dusan Bernát, Martin Klauco
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引用次数: 8

Abstract

Computation of the minimum dominating set problem is a classical discrete optimization problem in graph theory. Recently, it has found application in the network controlling theory. In this paper, there are compared three approaches of small dominating set computation. The first one is based on the integer linear programming. The second one is the combined hill-climbing algorithm which is based on the randomization and binary searching. Both are compared with a simply greedy algorithm. The experiments were conducted for three different graph classes. The integer linear programming achieved the best performance for the large real-world network's analysis.
现实网络中近似最优支配集计算算法的比较
最小支配集问题的计算是图论中一个经典的离散优化问题。近年来,它在网络控制理论中得到了应用。本文比较了小支配集计算的三种方法。第一种是基于整数线性规划的。第二种是基于随机化和二叉搜索的组合爬坡算法。两者都与一个简单的贪心算法进行了比较。实验针对三种不同的图类进行。整数线性规划在实际大型网络的分析中取得了最好的效果。
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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