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Bipartite Graphs for Monitoring Clusters Transitions

机译:用于监视群集过渡的二部图

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摘要

The study of evolution has become an important research issue, especially in the last decade, due to a greater awareness of our world's volatility. As a consequence, a new paradigm has emerged to respond more effectively to a class of new problems in Data Mining. In this paper we address the problem of monitoring the evolution of clusters and propose the MClusT framework, which was developed along the lines of this new Change Mining paradigm. MClusT includes a taxonomy of transitions, a tracking method based in Graph Theory, and a transition detection algorithm. To demonstrate its feasibility and applicability we present real world case studies, using datasets extracted from Banco de Portugal and the Portuguese Institute of Statistics. We also test our approach in a benchmark dataset from TSDL. The results are encouraging and demonstrate the ability of MClusT framework to provide an efficient diagnosis of clusters transitions.
机译:进化论的研究已经成为一个重要的研究课题,尤其是在最近十年中,由于人们对我们的世界动荡有了更深入的认识。结果,出现了一种新的范例来更有效地响应数据挖掘中的一类新问题。在本文中,我们解决了监视集群演化的问题,并提出了MClusT框架,该框架是根据这种新的Change Mining范例开发的。 MClusT包括过渡分类法,基于图论的跟踪方法以及过渡检测算法。为了证明其可行性和适用性,我们使用从葡萄牙银行和葡萄牙统计局提取的数据集,对现实世界进行案例研究。我们还在TSDL的基准数据集中测试了我们的方法。结果令人鼓舞,并证明了MClusT框架提供集群转移有效诊断的能力。

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