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Mining Fuzzy Association Rules Based on Parallel Particle Swarm Optimization Algorithm

机译:基于并行粒子群算法的模糊关联规则挖掘

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The association rule extraction process often involves a large number of candidate item sets and multiple read operations on data sets. With the emergence of massive data, the sequential association rule extraction algorithm also suffers from large I/O overhead and insufficient memory. This paper presents a new multi-swarm parallel multi-mutation particle swarm optimization algorithm (MsP-MmPSO) to search several groups in parallel. Experimental results show that the MsP-MmPSO algorithm has an advantage in terms of execution time over traditional particle swarm optimization, especially when the amount or dimensions of the data increase. Experiments also verify that a good task allocation method can reduce the execution time of the parallel algorithm.
机译:关联规则提取过程通常涉及大量候选项目集和对数据集的多次读取操作。随着海量数据的出现,顺序关联规则提取算法还遭受大量I / O开销和内存不足的困扰。提出了一种新的多群并行多变异粒子群优化算法(MsP-MmPSO),用于并行搜索多个组。实验结果表明,MsP-MmPSO算法在执行时间方面优于传统的粒子群算法,尤其是在数据量或数据量增加时。实验还证明,良好的任务分配方法可以减少并行算法的执行时间。

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