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Super-Resolution Community Detection for Layer-Aggregated Multilayer Networks

机译:分层聚合多层网络的超分辨率社区检测

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摘要

Applied network science often involves preprocessing network data before applying a network-analysis method, and there is typically a theoretical disconnect between these steps. For example, it is common to aggregate time-varying network data into windows prior to analysis, and the trade-offs of this preprocessing are not well understood. Focusing on the problem of detecting small communities in multilayer networks, we study the effects of layer aggregation by developing random-matrix theory for modularity matrices associated with layer-aggregated networks with N nodes and L layers, which are drawn from an ensemble of Erdős–Rényi networks with communities planted in subsets of layers. We study phase transitions in which eigenvectors localize onto communities (allowing their detection) and which occur for a given community provided its size surpasses a detectability limit K*. When layers are aggregated via a summation, we obtain KO(NL/T), where T is the number of layers across which the community persists. Interestingly, if T is allowed to vary with L, then summation-based layer aggregation enhances small-community detection even if the community persists across a vanishing fraction of layers, provided that T/L decays more slowly than 𝒪(L−1/2). Moreover, we find that thresholding the summation can, in some cases, cause K* to decay exponentially, decreasing by orders of magnitude in a phenomenon we call super-resolution community detection. In other words, layer aggregation with thresholding is a nonlinear data filter enabling detection of communities that are otherwise too small to detect. Importantly, different thresholds generally enhance the detectability of communities having different properties, illustrating that community detection can be obscured if one analyzes network data using a single threshold.
机译:应用网络科学通常涉及在应用网络分析方法之前对网络数据进行预处理,并且通常在这些步骤之间存在理论上的脱节。例如,在分析之前将时变网络数据聚合到窗口中是很常见的,并且这种预处理的权衡还不太清楚。着眼于检测多层网络中的小型社区的问题,我们通过开发与具有N个节点和L个层的层聚合网络相关的模块化矩阵的随机矩阵理论,研究了层聚合的影响,该矩阵取自Erdős的整体– Rényi网络与在各层子集中种植的社区建立了联系。我们研究相变,其中特征向量位于社区中(允许对其进行检测),并且如果给定社区的大小超过可检测性限制K * ,则该相变会在给定社区中发生。通过求和汇总图层时,我们获得 < mrow> K O N L / T ,其中T是社区持续存在的层数。有趣的是,如果允许T随L变化,那么即使社区在消失的层中持续存在,基于求和的层聚合也会增强小社区检测,前提是T / L的衰减比&#x1d4aa;(L < sup> -1/2 )。此外,我们发现,在某些情况下,对总和进行阈值处理可能会导致K * 呈指数衰减,在我们称为超分辨率社区检测的现象中,其数量级下降。换句话说,带阈值的层聚合是一种非线性数据过滤器,它可以检测原本无法检测到的社区。重要的是,不同的阈值通常会增强具有不同属性的社区的可检测性,这说明如果使用单个阈值分析网络数据,则社区检测会被遮盖。

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