基于数据分区的高效大规模聚类

Malika Bendechache, Mohand Tahar Kechadi, Nhien-An Le-Khac
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引用次数: 30

摘要

聚类技术对于提取和识别数据集中的模式非常有吸引力。然而,它们在非常大的空间数据集上的应用面临着许多挑战,如高维数据、异构性和一些算法的高复杂性。例如,一些算法可能具有线性复杂性,但它们需要领域知识才能确定其输入参数。分布式集群技术是应对大数据挑战(例如,Volume、Variety、Veracity和Velocity)的一个很好的选择。通常这些技术包括两个阶段。第一阶段生成局部模型或模式,第二阶段倾向于汇总局部结果以获得全局模型。虽然第一阶段可以在每个站点上并行执行,因此效率很高,但是聚合阶段是复杂的、耗时的,并且可能产生不正确和模糊的全局集群,从而产生不正确的模型。在本文中,我们提出了一种新的分布式聚类方法来有效地处理两个阶段,即局部结果的生成和全局模型的生成。在第一阶段,我们的方法能够使用不同的聚类技术分析位于每个站点的数据集。聚合阶段的设计使最终的集群紧凑而准确,而整个过程在时间和内存分配方面是有效的。为了评估,我们使用了两种著名的聚类算法,K-Means和DBSCAN。这种分布式聚类技术的关键输出之一是全局聚类的数量是动态的,不需要预先固定。实验结果表明,该方法具有可扩展性和高质量。
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Efficient Large Scale Clustering Based on Data Partitioning
Clustering techniques are very attractive for extracting and identifying patterns in datasets. However, their application to very large spatial datasets presents numerous challenges such as high-dimensionality data, heterogeneity, and high complexity of some algorithms. For instance, some algorithms may have linear complexity but they require the domain knowledge in order to determine their input parameters. Distributed clustering techniques constitute a very good alternative to the big data challenges (e.g.,Volume, Variety, Veracity, and Velocity). Usually these techniques consist of two phases. The first phase generates local models or patterns and the second one tends to aggregate the local results to obtain global models. While the first phase can be executed in parallel on each site and, therefore, efficient, the aggregation phase is complex, time consuming and may produce incorrect and ambiguous global clusters and therefore incorrect models. In this paper we propose a new distributed clustering approach to deal efficiently with both phases, generation of local results and generation of global models by aggregation. For the first phase, our approach is capable of analysing the datasets located in each site using different clustering techniques. The aggregation phase is designed in such a way that the final clusters are compact and accurate while the overall process is efficient in time and memory allocation. For the evaluation, we use two well-known clustering algorithms, K-Means and DBSCAN. One of the key outputs of this distributed clustering technique is that the number of global clusters is dynamic, no need to be fixed in advance. Experimental results show that the approach is scalable and produces high quality results.
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