Co-ClusterD:一种具有顺序更新的数据共聚的分布式框架

Sen Su, Xiang Cheng, Lixin Gao, Jiangtao Yin
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引用次数: 4

摘要

共聚类是一种功能强大的数据挖掘工具,可用于共现和二元数据的挖掘。随着数据集的日益庞大,协同聚类的可扩展性变得越来越重要。在本文中,我们提出了两种在分布式环境中并行化顺序更新的共聚类方法。基于这两种方法,我们提出了一个新的分布式框架,Co-ClusterD,它支持有效地实现具有顺序更新的共聚类算法。我们设计并实现了Co-ClusterD,并通过快速非负矩阵三因子分解(FNMTF)和信息理论共聚(ITCC)两种共聚算法证明了它的有效性。我们在本地机器集群和Amazon EC2云上评估我们的框架。我们的评估表明,在Co-ClusterD中实现的共聚类算法可以获得更好的结果,并且比传统的并发算法运行得更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-ClusterD: A Distributed Framework for Data Co-Clustering with Sequential Updates
Co-clustering is a powerful data mining tool for co-occurrence and dyadic data. As data sets become increasingly large, the scalability of co-clustering becomes more and more important. In this paper, we propose two approaches to parallelize co-clustering with sequential updates in a distributed environment. Based on these two approaches, we present a new distributed framework, Co-ClusterD, that supports efficient implementations of co-clustering algorithms with sequential updates. We design and implement Co-ClusterD, and show its efficiency through two co-clustering algorithms: fast nonnegative matrix tri-factorization (FNMTF) and information theoretic co-clustering (ITCC). We evaluate our framework on both a local cluster of machines and the Amazon EC2 cloud. Our evaluation shows that co-clustering algorithms implemented in Co-ClusterD can achieve better results and run faster than their traditional concurrent counterparts.
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