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An improved genetic algorithm with conditional genetic operators and its application to set-covering problem

机译:一种带条件遗传算子的改进遗传算法及其在集合覆盖问题中的应用

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摘要

The genetic algorithm (GA) is a popular, biologically inspired optimization method. However, in the GA there is no rule of thumb to design the GA operators and select GA parameters. Instead, trial-and-error has to be applied. In this paper we present an improved genetic algorithm in which crossover and mutation are performed conditionally instead of probability. Because there are no crossover rate and mutation rate to be selected, the proposed improved GA can be more easily applied to a problem than the conventional genetic algorithms. The proposed improved genetic algorithm is applied to solve the set-covering problem. Experimental studies show that the improved GA produces better results over the conventional one and other methods.
机译:遗传算法(GA)是一种流行的,受生物学启发的优化方法。但是,在GA中,没有设计GA算子和选择GA参数的经验法则。相反,必须应用试错法。在本文中,我们提出了一种改进的遗传算法,其中有条件地执行交叉和变异而不是概率。因为没有交叉率和突变率可供选择,所以与常规遗传算法相比,所提出的改进遗传算法可以更容易地应用于问题。提出的改进遗传算法被应用于解决集合覆盖问题。实验研究表明,改进的遗传算法比常规方法和其他方法产生更好的结果。

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