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Self-Tuning Mechanism for Genetic Algorithms Parameters, an Application to Data-Object Allocation in the Web

机译:遗传算法参数的自我调整机制,Web中数据对象分配的应用程序

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In this paper, a new mechanism for automatically obtaining some control parameter values for Genetic Algorithms is presented, which is independent of problem domain and size. This approach differs from the traditional methods which require knowing first the problem domain, and then knowing how to select the parameter values for solving specific problem instances. The proposed method is based on a sample of problem instances, whose solution permits to characterize the problem and to obtain the parameter values.To test the method, a combinatorial optimization model for data-objects allocation in the Web (known as DFAR) was solved using Genetic Algorithms. We show how the proposed mechanism permits to develop a set of mathematical expressions that relates the problem instance size to the control parameters of the algorithm. The experimental results show that the self-tuning of control parameter values of the Genetic Algorithm for a given instance is possible, and that this mechanism yields satisfactory results in quality and execution time. We consider that the proposed method principles can be extended for the self-tuning of control parameters for other heuristic algorithms.
机译:在本文中,提出了一种自动获得遗传算法的一些控制参数值的新机制,其与问题域和大小无关。这种方法与需要知道第一问题域的传统方法不同,然后了解如何选择用于解决特定问题实例的参数值。所提出的方法基于问题实例的样本,其解决方案允许表征问题并获得参数值。要测试该方法,解决了网络(称为DFAR)的数据对象分配的组合优化模型使用遗传算法。我们展示了所提出的机制如何允许开发一组数学表达式,该表达式将问题实例大小与算法的控制参数相关联。实验结果表明,对于给定的实例的遗传算法的控制参数值的自我调整是可能的,并且该机制产生令人满意的质量和执行时间。我们认为,可以扩展所提出的方法原则,以便为其他启发式算法进行控制参数的自我调整。

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