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Parallel hierarchical architectures for efficient consensus clustering on big multimedia cluster ensembles

机译:并行分层体系结构,用于大多数多媒体集群集群的高效共识群集

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Consensus clustering is a useful tool for robust or distributed clustering applications. However, given the fact that time complexities of the consensus functions scale linearly or quadratically with the number of combined clusterings, execution can be slow or even impossible when operating on big cluster ensembles, a situation encountered when we pursue robust multimedia data clustering. This work introduces hierarchical consensus architectures, an inherently parallel approach based on the divide-and-conquer strategy for computationally efficient consensus clustering, in a bid to make faster, more effective consensus clustering possible in big multimedia cluster ensemble scenarios. Moreover, we define a specific implementation of hierarchical architectures, including a theoretical analysis of its fully parallel implementation computational complexity. In experiments conducted on unimodal and multimedia data sets involving small and big cluster ensembles, we find parallel hierarchical consensus architectures variants perform faster than traditional flat consensus in 75% of the experiments on small cluster ensembles, a percentage that rises to 100% on unimodal and multimedia big cluster ensembles, achieving an average speedup ratio of 30.5. Moreover, depending on the consensus function employed, the quality of the obtained consensus partitions ensures robust clustering results. (C) 2019 Elsevier Inc. All rights reserved.
机译:共识群集是强大或分布式群集应用程序的有用工具。然而,鉴于当时共识函数的时间复杂性与组合群集的数量线性或二次划分,在大集群集合上运行时,执行可能会缓慢甚至不可能,这是我们追求强大的多媒体数据聚类时遇到的情况。这项工作介绍了分层共识架构,这是一种基于分频和征服策略的固有并行方法,用于计算有效的共识群集,以在大型多媒体集群集群方案中进行更快,更有效的共识聚类。此外,我们定义了分层体系结构的特定实现,包括对其完全并行实现计算复杂度的理论分析。在实验中,在涉及小型和大集群集群的单峰和多媒体数据集进行的实验中,我们发现并行分层共识架构变体比在75%的小集群集合中的75%的实验中的传统平面共识更快,这是一个百分比上升到100%的单位和多媒体大集群集合,实现平均速度为30.5。此外,根据所采用的共识功能,所获得的共识分区的质量可确保强大的聚类结果。 (c)2019 Elsevier Inc.保留所有权利。

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