We develop a method to infer community structure in directed networks where the groups are ordered in a latent one-dimensional hierarchy that determines the preferred edge direction. Our nonparametric Bayesian approach is based on a modification of the stochastic block model (SBM), which can take advantage of rank alignment and coherence to produce parsimonious descriptions of networks that combine ordered hierarchies with arbitrary mixing patterns between groups. Since our model also includes directed degree correction, we can use it to distinguish non-local hierarchical structure from local in- and out-degree imbalance -- thus removing a source of conflation present in most ranking methods. We also demonstrate how we can reliably compare with the results obtained with the unordered SBM variant to determine whether a hierarchical ordering is statistically warranted in the first place. We illustrate the application of our method on a wide variety of empirical networks across several domains.
翻译:我们开发了一种方法来推断定向网络中的社区结构,在这些网络中,这些团体是按潜在的一维等级排列的,这种等级决定了优先的边缘方向。我们的非参数巴伊西亚方法基于对随机区块模型(SBM)的修改,该模型可以利用等级对齐和一致性加以利用,从而产生对将按顺序排列的等级与群体之间任意混合模式相结合的网络的模糊描述。由于我们的模型还包括定向度校正,我们可以用它来区分非地方等级结构与地方内外的不平衡 -- -- 从而消除大多数排名方法中存在的混杂来源。我们还展示了我们如何可靠地比较与无顺序的SBM变体所取得的结果,以确定首先在统计上是否值得按等级排列的顺序排列。我们展示了我们的方法在多个领域的各种经验网络中的应用情况。