首页> 外文会议>European Conference on Genetic Programming(EuroGP 2006); 20060410-12; Budapest(HU) >A Divide Conquer Strategy for Improving Efficiency and Probability of Success in Genetic Programming
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A Divide Conquer Strategy for Improving Efficiency and Probability of Success in Genetic Programming

机译:提高基因编程效率和成功率的分而治之策略

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A common method for improving a genetic programming search on difficult problems is either multiplying the number of runs or increasing the population size. In this paper we propose a new search strategy which attempts to obtain a higher probability of success with smaller amounts of computational resources. We call this model Divide & Conquer since our algorithm initially partitions the search space in smaller regions that are explored independently of each other. Then, our algorithm collects the most competitive individuals found in each partition and exploits them in order to get a solution. We benchmarked our proposal on three problem domains widely used in the literature. Our results show a significant improvement of the likelihood of success while requiring less computational resources than the standard algorithm.
机译:改善对困难问题的遗传程序设计搜索的常用方法是增加运行次数或增加种群数量。在本文中,我们提出了一种新的搜索策略,该策略试图以较少的计算资源来获得较高的成功概率。我们将此模型称为分而治之,因为我们的算法最初将搜索空间划分为较小的区域,这些区域彼此独立地进行探索。然后,我们的算法会收集在每个分区中找到的最具竞争力的个人,并加以利用以寻求解决方案。我们根据在文献中广泛使用的三个问题域对我们的建议进行了基准测试。我们的结果显示出成功可能性的显着提高,同时所需的计算资源比标准算法少。

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