多层次社区结构的质量度量

M. Delest, J. Fedou, G. Melançon
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引用次数: 11

摘要

挖掘关系数据通常归结为计算集群,即寻找形成内聚子单元的数据元素的子社区,同时彼此之间很好地分离。集群本身有时被称为“社区”,集群相互关联的方式通常被称为“社区结构”。我们研究了Mancoridis等人引入的模块化准则MQ,以推断关系数据上的社区结构。我们证明了模块化度量MQ的一个基本和有用的性质,表明它可以用高斯分布近似,使其成为图聚类中不太集中的优化准则的普遍选择。这使得比较同一图的两个不同聚类,以及根据MQ是高斯分布这一事实断言给定聚类的总体质量成为可能。此外,我们还引入了一种将MQ扩展到图的层次聚类的泛化方法,当层次结构变得平坦时,这种方法可以简化为原始MQ
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A Quality Measure for Multi-Level Community Structure
Mining relational data often boils down to computing clusters, that is finding sub-communities of data elements forming cohesive sub-units, while being well separated from one another. The clusters themselves are sometimes terms "communities" and the way clusters relate to one another is often referred to as a "community structure". We study a modularity criterion MQ introduced by Mancoridis et al. in order to infer community structure on relational data. We prove a fundamental and useful property of the modularity measure MQ, showing that it can be approximated by a Gaussian distribution, making it a prevalent choice over less focused optimization criterion for graph clustering. This makes it possible to compare two different clusterings of a same graph as well as asserting the overall quality of a given clustering relying on the fact that MQ is Gaussian. Moreover, we introduce a generalization extending MQ to hierarchical clusterings of graphs which reduces to the original MQ when the hierarchy becomes flat
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