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Clustering using a coarse-grained parallel Genetic Algorithm: A Preliminary Study

机译:使用粗粒度并行遗传算法进行聚类的初步研究

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Genetic Algorithms (GA) are useful in solving complex optimization problems. By posing pattern clustering as an optimization problem, GAs can be used to obtain an optimal minimum squared-error partitions. In order to improve the total execution time, a distributed algorithm has been developed using the divide and conquer approach. Using a standard communication library called PVM, the distributed algorithm has been implemented on a workstation cluster. The GA approach gives better quality clusters for many data sets compared to a standard K-Means clustering algorithm. We have achieved a near linear speedup for the distributed implementation.
机译:遗传算法(GA)可用于解决复杂的优化问题。通过将模式聚类视为一个优化问题,可以将GA用于获得最佳最小平方误差分区。为了改善总执行时间,使用分而治之方法开发了一种分布式算法。使用称为PVM的标准通信库,已在工作站集群上实现了分布式算法。与标准K均值聚类算法相比,GA方法可为许多数据集提供更好质量的聚类。对于分布式实现,我们已经实现了近乎线性的加速。

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