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Fuzzy clustering algorithms and validity indices for distributed data

机译:分布式数据的模糊聚类算法和有效性指标

摘要

This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to handle distributed data in an exact way, i.e., with no approximation of results with respect to their original centralized versions. The same framework allows the exact distribution of relative validity indices used to evaluate the quality of fuzzy clustering solutions. Complexity analyses for each distributed algorithm and index are reported in terms of space, time, and communication aspects. A general procedure to estimate the number of clusters in a non-centralized fashion using the proposed framework is also described. Such a procedure is directly applicable not only to distributed data, but to parallel data processing scenarios as well. Experimental results illustrate the speedup obtained when running algorithms under the proposed framework in multiple cores of a processor, when compared to their traditional, centralized counterparts running in a single core. Additionally, the quality of the results and amount of data transmitted are assessed and compared among different fuzzy clustering algorithms.
机译:本章介绍了一个统一的框架,用于概括许多模糊聚类算法,以精确的方式处理分布式数据,即相对于其原始集中版本而言,结果没有近似值。相同的框架可以准确分配相对有效性指标,以用于评估模糊聚类解决方案的质量。报告了每种分布式算法和索引的复杂性分析,包括空间,时间和通信方面。还介绍了使用提出的框架以非集中方式估计群集数量的一般程序。这样的过程不仅直接适用于分布式数据,而且还适用于并行数据处理方案。实验结果表明,与在单个内核中运行的传统集中式对等程序相比,在所提出的框架下在处理器的多个内核中运行算法时所获得的加速效果。此外,评估结果的质量和传输的数据量,并在不同的模糊聚类算法之间进行比较。

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