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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A distributed hierarchical genetic algorithm for efficient optimization and pattern matching
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A distributed hierarchical genetic algorithm for efficient optimization and pattern matching

机译:用于高效优化和模式匹配的分布式层次遗传算法

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摘要

In this paper we propose a new approach in genetic algorithm called distributed hierarchical genetic algorithm (DHGA) for optimization and pattern matching. It is eventually a hybrid technique combining the advantages of both distributed and hierarchical processes in exploring the search space. The search is initially distributed over the space and then in each subspace the algorithm works in a hierarchical way. The entire space is essentially partitioned into a number of subspaces depending on the dimensionality of the space. This is done in order to spread the search process more evenly over the whole space. In each subspace the genetic algorithm is employed for searching and the search process advances from one hypercube to a neighboring hypercube hierarchically depending on the convergence status of the population and the solution obtained so far. The dimension of the hypercube and the resolution of the search space are altered with iterations. Thus the search process passes through variable resolution (coarse-to-fine) search space. Both analytical and empirical studies have been carried out to evaluate the performance between DHGA and distributed conventional GA (DCGA) for different function optimization problems. Further, the performance of the algorithms is demonstrated on problems like pattern matching and object matching with edge map. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种新的遗传算法方法,称为分布式层次遗传算法(DHGA),用于优化和模式匹配。它最终是一种混合技术,结合了分布式和分层过程在探索搜索空间中的优势。搜索最初分布在整个空间上,然后在每个子空间中,算法以分层方式工作。根据空间的维度,整个空间实际上被划分为多个子空间。这样做是为了将搜索过程更均匀地分布在整个空间上。在每个子空间中,都采用遗传算法进行搜索,搜索过程根据总体的收敛状态和到目前为止所获得的解决方案从一个超多维数据集逐步进入相邻的超多维数据集。超立方体的尺寸和搜索空间的分辨率会随着迭代而改变。因此,搜索过程将经过可变分辨率(从粗到细)的搜索空间。进行了分析和经验研究,以评估DHGA和分布式常规GA(DCGA)之间针对不同功能优化问题的性能。此外,在诸如模式匹配和与边缘图的对象匹配之类的问题上证明了算法的性能。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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