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Comparison of a spatially-structured cellular evolutionary algorithm to an evolutionary algorithm with panmictic population

机译:空间结构化蜂窝进化算法对持粉群进化算法的比较

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Evolutionary Algorithms are metaheuristic optimization algorithms which are based on a population of individual candidate solutions. These solutions are evolved with the aim to solve a given problem. We compare two types of Evolutionary Algorithms, one with a panmictic population and one with a spatially-structured population. Previous works indicate that evolutionary algorithms with a spatially-structured population perform better that those with a panmictic population. In this work we will examine whether this holds true for evolving Artificial Neural Networks. For comparison we use two test problems, a simple XOR calculation and a complex task requiring self-organization among a number of agents. Our findings show that for the evaluated tasks, the algorithm with a spatially-structured population performs better than an algorithm with panmictic population.
机译:进化算法是基于个别候选解决方案的群体的成群质优化算法。这些解决方案随着旨在解决给定问题的目的。我们比较两种类型的进化算法,一个具有持瘫痪的人口和具有空间结构的人口的进化算法。以前的作品表明,具有空间结构群体的进化算法表现得更好,那些具有持瘫痪的人口。在这项工作中,我们将检查这是否适用于不断变化的人工神经网络。为了比较,我们使用两个测试问题,简单的XOR计算和一个复杂的任务,需要在许多代理中进行自组织。我们的研究结果表明,对于评估的任务,具有空间结构群体的算法比具有持帕米奇人口的算法更好地执行。

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