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Parallel Chameleon Clustering Based on MapReduce

机译:基于MapReduce的并行变色龙聚类

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摘要

With the enlarging volumes of datasets in various areas and the rapid development of distributed technologies, parallel clustering is becoming increasingly important. To cluster large-scale data of various shapes, this paper proposes a parallel Chameleon clustering algorithm. The key idea is using a parallel minimum spanning tree algorithm to generate the initial clusters after obtaining the k-nearest neighbor graph of the original dataset in a parallel way inspired by matrix multiplication, and then using strategies suggested by the primary Chameleon clustering to combine clusters and obtain the final clusters. Finally, we design the parallel Chameleon clustering based on MapReduce. Experiments show that this algorithm is efficient and well-performed.
机译:随着各个领域数据集的不断扩大以及分布式技术的飞速发展,并行聚类变得越来越重要。为了聚类各种形状的大规模数据,本文提出了一种并行的Chameleon聚类算法。关键思想是,在矩阵乘法的启发下,使用并行最小生成树算法以并行方式获取原始数据集的k最近邻图之后,生成初始聚类,然后使用主要Chameleon聚类建议的策略来合并聚类并获得最终的簇。最后,我们设计了基于MapReduce的并行Chameleon聚类。实验表明,该算法是高效且性能良好的。

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