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The MaxSolve algorithm for coevolution

机译:MaxSolve协同进化算法

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摘要

Coevolution can be used to adaptively choose the tests used for evaluating candidate solutions. A long-standing question is how this dynamic setup may be organized to yield reliable search methods. Reliability can only be considered in connection with a particular solution concept specifying what constitutes a solution. Recently, monotonic coevolution algorithms have been proposed for several solution concepts. Here, we introduce a new algorithm that guarantees monotonicity for the solution concept of maximizing the expected utility of a candidate solution. The method, called MaxSolve, is compared to the IPCA algorithm and found to perform more efficiently for a range of parameter values on an abstract test problem.
机译:协同进化可用于自适应地选择用于评估候选解决方案的测试。一个长期存在的问题是如何组织这种动态设置以产生可靠的搜索方法。只能结合指定解决方案的特定解决方案概念来考虑可靠性。近来,已经针对几种解决方案概念提出了单调协进化算法。在这里,我们介绍了一种新算法,该算法可保证解决方案概念的单调性,从而最大程度地提高候选解决方案的预期效用。将该方法称为MaxSolve,与IPCA算法进行了比较,发现该方法对于抽象测试问题上的一系列参数值均能更有效地执行。

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