元启发式的合作系统

J. M. Cadenas, M. C. Garrido, E. M. Ballester
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引用次数: 7

摘要

混合系统为解决复杂问题提供了更灵活的机制,这些问题可能很难用不太宽容的方法解决。因此,混合系统将是处理算法-实例问题的最合适的工具。算法-实例问题是指对一个问题的一个实例获得良好结果的算法及其参数可能不会在同一问题的另一个实例中得到相同的结果。所有这些都导致我们使用不同的算法在一个单一的协调模式下解决组合优化问题,这是一个元启发式的混合合作系统。为了构建这个系统,我们提出了一种基于数据挖掘和软计算的混合系统的构建方法。为了验证该方法的有效性,构建了两个基于模糊模型的混合系统来解决背包问题。第一个系统协调了两个元启发式算法,一个遗传算法和一个禁忌搜索。第二种方法增加了第三种元启发式方法——模拟退火,以检查系统的鲁棒性以及当添加元启发式方法时获得更高质量解的能力。给出了该系统得到的结果,并与个体元启发式得到的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cooperative System of Metaheuristics
Hybrid systems give more flexible mechanisms for solving complex problems that can be very difficult to solve using less tolerant approaches. Therefore, a hybrid system will be the most suitable tool in order to cope with the algorithm-instance problem, which says that it is possible that an algorithm and its parameters that obtain good results for an instance of a problem, do not get the same results for another instance of the same problem. All this leads us to use different algorithms to solve combinatorial optimization problems within a single coordinated schema, that is a hybrid cooperative system of metaheuristics. In order to build this system we have proposed a methodology for the construction of a hybrid system, based on data mining and soft computing. In order to test the usefulness of this methodology two hybrid systems based on a fuzzy model have been constructed to solve the knapsack problem. The first system coordinates two metaheuristics, a genetic algorithm and a tabu search. The second one adds a third metaheuristic, simulated annealing, in order to check the robustness of the system and its capacity of obtaining higher quality solutions when a metaheuristic is added. Results obtained by this systems and a comparison with the ones obtained with individual metaheuristics are shown.
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