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首页> 外文期刊>Evolutionary computation >A New Approach to Population Sizing for Memetic Algorithms: A Case Study for the Multidimensional Assignment Problem
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A New Approach to Population Sizing for Memetic Algorithms: A Case Study for the Multidimensional Assignment Problem

机译:模因算法的人口规模计算新方法:以多维分配问题为例

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摘要

Memetic algorithms are known to be a powerful technique in solving hard optimization problems. To design a memetic algorithm, one needs to make a host of decisions. Selecting the population size is one of the most important among them. Most of the algorithms in the literature fix the population size to a certain constant value. This reduces the algorithm's quality since the optimal population size varies for different instances, local search procedures, and runtimes. In this paper we propose an adjustable population size. It is calculated as a function of the runtime of the whole algorithm and the average runtime of the local search for the given instance. Note that in many applications the runtime of a heuristic should be limited and, therefore, we use this bound as a parameter of the algorithm. The average runtime of the local search procedure is measured during the algorithm's run. Some coefficients which are independent of the instance and the local search are to be tuned at the design time; we provide a procedure to find these coefficients.The proposed approach was used to develop a memetic algorithm for the multidimensional assignment problem (MAP). We show that our adjustable population size makes the algorithm flexible to perform efficiently for a wide range of running times and local searches and this does not require any additional tuning of the algorithm.
机译:模因算法是解决硬优化问题的强大技术。要设计模因算法,需要做出一系列决策。选择人口规模是其中最重要的一项。文献中的大多数算法都将总体大小固定为某个恒定值。由于最佳种群大小随不同实例,本地搜索过程和运行时间而变化,因此降低了算法的质量。在本文中,我们提出了可调整的人口规模。它是根据整个算法的运行时间和给定实例的本地搜索的平均运行时间来计算的。请注意,在许多应用程序中,试探法的运行时应受到限制,因此,我们将此边界用作算法的参数。本地搜索过程的平均运行时间是在算法运行期间测得的。在设计时需要调整一些与实例和局部搜索无关的系数。我们提供了一个找到这些系数的程序。所提出的方法用于开发一种用于多维分配问题(MAP)的模因算法。我们表明,我们可调整的总体大小使该算法具有灵活性,可以在宽范围的运行时间和本地搜索中高效执行,并且不需要对算法进行任何其他调整。

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