There is increasing appetite for analysing multiple network data. This is due to the fast-growing body of applications that demand such methods. These include: the study of connectomes in neuroscience and the study of human mobility with respect to intelligent displays in computer science. Recent technological advancements have allowed the collection of this type of data. Both applications entail the analysis of a heterogeneous population of networks. In this paper we focus on the problem of clustering the elements of a network population, here each cluster will be characterised by a network representative. We take advantage of the Bayesian machinery to simultaneously infer the cluster membership, the representatives and the community structure of the representatives. Extensive simulation studies show our model performs well in both clustering multiple network data and inferring the model parameters.
翻译:分析多种网络数据的胃口越来越大,这是因为要求采用这种方法的应用程序数量迅速增加,其中包括:神经科学中连接体的研究和计算机科学中智能显示器方面人类流动性的研究;最近的技术进步使得能够收集这类数据;两种应用都涉及对网络各式各样的人口进行分析;在本文件中,我们集中研究将网络人口要素分组的问题,每个组群将由一名网络代表作特征说明;我们利用巴耶斯机械同时推断组群成员、代表和代表的社区结构;广泛的模拟研究显示,我们的模型在组合多个网络数据和推断模型参数方面表现良好。