论文标题
揭示网络分区之间的共识和张力
Revealing consensus and dissensus between network partitions
论文作者
论文摘要
社区检测方法试图将网络分为具有相似属性的节点组,从而揭示其大规模结构。采用这种方法时,一个主要的挑战是它们通常是退化的,通常会产生复杂的竞争答案景观。作为试图从替代解决方案人群中提取理解的一种尝试,存在许多方法以总结整个分布的单个分区“点估计”的形式建立共识。在这里,我们表明,当基础分布太异质时,从这样的估计值中不可能从此类估计中获得一致的答案。作为替代方案,我们提供了一组旨在以一种不仅捕获现有共识,而且捕获人口元素之间的分歧的方式来表征和总结分区的复杂种群的全面方法。我们的方法能够对分区的混合种群进行建模,其中多个共识可以共存,代表网络结构的不同竞争假设。我们还展示了如何使用我们的方法比较分区对,如何将它们推广到层次结构分区,并用于在竞争假设之间进行统计模型选择。
Community detection methods attempt to divide a network into groups of nodes that share similar properties, thus revealing its large-scale structure. A major challenge when employing such methods is that they are often degenerate, typically yielding a complex landscape of competing answers. As an attempt to extract understanding from a population of alternative solutions, many methods exist to establish a consensus among them in the form of a single partition "point estimate" that summarizes the whole distribution. Here we show that it is in general not possible to obtain a consistent answer from such point estimates when the underlying distribution is too heterogeneous. As an alternative, we provide a comprehensive set of methods designed to characterize and summarize complex populations of partitions in a manner that captures not only the existing consensus, but also the dissensus between elements of the population. Our approach is able to model mixed populations of partitions where multiple consensuses can coexist, representing different competing hypotheses for the network structure. We also show how our methods can be used to compare pairs of partitions, how they can be generalized to hierarchical divisions, and be used to perform statistical model selection between competing hypotheses.