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Stochastic block models for multiplex networks: an application to a multilevel network of researchers

机译:多元网络的随机块模型:在研究人员的多层网络中的应用

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Modelling relationships between individuals is a classical question in social sciences and clustering individuals according to the observed patterns of interactions allows us to uncover a latent structure in the data. The stochastic block model is a popular approach for grouping individuals with respect to their social comportment. When several relationships of various types can occur jointly between individuals, the data are represented by multiplex networks where more than one edge can exist between the nodes. We extend stochastic block models to multiplex networks to obtain a clustering based on more than one kind of relationship. We propose to estimate the parameters-such as the marginal probabilities of assignment to groups (blocks) and the matrix of probabilities of connections between groups-through a variational expectation-maximization procedure. Consistency of the estimates is studied. The number of groups is chosen by using the integrated completed likelihood criterion, which is a penalized likelihood criterion. Multiplex stochastic block models arise in many situations but our applied example is motivated by a network of French cancer researchers. The two possible links (edges) between researchers are a direct connection or a connection through their laboratories. Our results show strong interactions between these two kinds of connection and the groups that are obtained are discussed to emphasize the common features of researchers grouped together.
机译:对个体之间的关系进行建模是社会科学中的一个经典问题,根据观察到的相互作用模式对个体进行聚类可以使我们发现数据中的潜在结构。随机障碍物模型是一种针对个人的社交能力进行分组的流行方法。当个体之间可以共同出现多种类型的几种关系时,数据将由多路复用网络表示,其中节点之间可以存在多个边缘。我们将随机块模型扩展到多路复用网络,以获得基于一种以上关系的聚类。我们建议通过变分期望最大化过程来估计参数,例如分配给组(块)的边际概率和组之间的连接概率矩阵。研究估计的一致性。通过使用综合的完成似然性准则(一种惩罚性似然性准则)来选择组数。多重随机块模型在许多情况下都会出现,但是我们的应用示例是由法国癌症研究人员网络推动的。研究人员之间的两个可能的联系(边缘)是直接联系或通过他们的实验室联系。我们的研究结果表明,这两种联系之间有很强的相互作用,并讨论了所获得的研究小组,以强调研究者分组在一起的共同特征。

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