Generative models for two-ground-truth partitions in networks

Lena Mangold, Camille Roth
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Abstract

A myriad of approaches have been proposed to characterize the mesoscale structure of networks most often as a partition based on patterns variously called communities, blocks, or clusters. Clearly, distinct methods designed to detect different types of patterns may provide a variety of answers' to the networks mesoscale structure. Yet even multiple runs of a given method can sometimes yield diverse and conflicting results, producing entire landscapes of partitions which potentially include multiple (locally optimal) mesoscale explanations of the network. Such ambiguity motivates a closer look at the ability of these methods to find multiple qualitatively different ``ground truth'' partitions in a network. Here we propose the stochastic cross-block model (SCBM), a generative model which allows for two distinct partitions to be built into the mesoscale structure of a single benchmark network. We demonstrate a use case of the benchmark model by appraising the power of stochastic block models (SBMs) to detect implicitly planted coexisting bicommunity and core-periphery structures of different strengths. Given our model design and experimental setup, we find that the ability to detect the two partitions individually varies by SBM variant and that coexistence of both partitions is recovered only in a very limited number of cases. Our findings suggest that in most instances only one---in some way dominating---structure can be detected, even in the presence of other partitions. They underline the need for considering entire landscapes of partitions when different competing explanations exist and motivate future research to advance partition coexistence detection methods. Our model also contributes to the field of benchmark networks more generally by enabling further exploration of the ability of new and existing methods to detect ambiguity in the mesoscale structure of networks.
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网络中两点真值分区的生成模型
人们提出了无数的方法来描述网络的中尺度结构,最常见的是基于各种称为社区、块或集群的模式的分区。显然,设计用于检测不同类型模式的不同方法可能为网络中尺度结构提供各种各样的答案。然而,即使对给定方法进行多次运行,有时也会产生不同的和相互矛盾的结果,产生可能包含多个(局部最优的)网络中尺度解释的分区的整个景观。这种模糊性促使人们更仔细地研究这些方法在网络中找到多个定性不同的“基础真理”分区的能力。在这里,我们提出了随机跨块模型(SCBM),这是一种生成模型,允许将两个不同的分区构建到单个基准网络的中尺度结构中。我们通过评估随机块模型(sbm)检测隐种共存双群落和不同强度的核心-外围结构的能力,展示了基准模型的一个用例。考虑到我们的模型设计和实验设置,我们发现单独检测两个分区的能力因SBM变体而异,并且只有在非常有限的情况下才能恢复两个分区的共存。我们的发现表明,在大多数情况下,即使存在其他分区,也只能检测到一个(以某种方式占主导地位)结构。他们强调,当存在不同的相互竞争的解释时,需要考虑分区的整个景观,并激励未来的研究来推进分区共存检测方法。我们的模型还通过进一步探索新的和现有的方法在网络中尺度结构中检测模糊性的能力,为基准网络领域做出了更广泛的贡献。
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