An evolutionary algorithm for the T-constrained variation of Minimum Hitting Set problem

V. Cutello, E. Mastriani, F. Pappalardo
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引用次数: 5

Abstract

We propose an evolutionary algorithm to approximate optimal solutions to instances of the T-constrained variation of the Minimum Hitting Set Problem. The base problem, Minimum Hitting Set, is a well known /spl Nscr//spl Pscr/-complete problem. Our genetic algorithm will use the idea of viruses which infect chromosomes and change one of their bits. A special dynamic fitness function has been also used to improve overall performance.
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最小命中集问题t约束变分的一种进化算法
我们提出了一种进化算法来逼近最小命中集问题的t约束变异实例的最优解。基本问题,最小命中集,是一个众所周知的/spl Nscr//spl Pscr/-完全问题。我们的遗传算法将使用病毒的思想,病毒感染染色体并改变其中的一个比特。一个特殊的动态适应度函数也被用来提高整体性能。
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