基于密度的分布式聚类方法研究

Nhien-An Le-Khac, Mohand Tahar Kechadi
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引用次数: 4

摘要

从非常大的数据集中有效地提取有用的知识仍然是一个挑战,主要是当数据集是分布式的、异构的,并且根据所涉及的各个节点的不同质量不同时。为了减少通信开销,现有的分布式聚类方法大多是通过聚合在每个单独节点上获得的局部结果来生成全局模型。解决方案的复杂性和质量在很大程度上取决于聚合的质量。在这方面,我们提出了基于分布密度的聚类,通过考虑局部聚类的形状,既减少了通信开销,又提高了全局模型的质量。初步结果表明,该算法是很有前途的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On a Distributed Approach for Density-Based Clustering
Efficient extraction of useful knowledge from very large datasets is still a challenge, mainly when the datasets are distributed, heterogeneous and of different quality depending of the various nodes involved. To reduce the overhead cost due to communications, most of the existing distributed clustering approaches generates global models by aggregating local results obtained on each individual node. The complexity and quality of solutions depend highly on the quality of the aggregation. In this respect, we propose distributed density-based clustering that both reduces the communication overheads and improves the quality of the global models by considering the shapes of local clusters. From preliminary results we show that this algorithm is very promising.
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