Block models for generalized multipartite networks: Applications in ecology and ethnobiology

IF 1.2 4区 数学 Q2 STATISTICS & PROBABILITY
A. Bar-Hen, P. Barbillon, S. Donnet
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引用次数: 10

Abstract

Generalized multipartite networks consist in the joint observation of several networks implying some common pre-specified groups of individuals. Such complex networks arise commonly in social sciences, biology, ecology, etc. We propose a flexible probabilistic model named Multipartite Block Model (MBM) able to unravel the topology of multipartite networks by identifying clusters (blocks) of nodes sharing the same patterns of connectivity across the collection of networks they are involved in. The model parameters are estimated through a variational version of the Expectation–Maximization algorithm. The numbers of blocks are chosen using an Integrated Completed Likelihood criterion specifically designed for our model. A simulation study illustrates the robustness of the inference strategy. Finally, two datasets respectively issued from ecology and ethnobiology are analyzed with the MBM in order to illustrate its flexibility and its relevance for the analysis of real datasets. The inference procedure is implemented in an R-package GREMLIN, available on Github (https://github.com/Demiperimetre/GREMLINhttps://github.com/Demiperimetre/GREMLIN).
广义多方网络的块模型:在生态学和民族生物学中的应用
广义多部分网络包括对几个网络的联合观察,这些网络意味着一些共同的预先指定的个体群体。这种复杂的网络通常出现在社会科学、生物学、生态学等领域。我们提出了一种名为多部分块模型(MBM)的灵活概率模型,该模型能够通过识别在所涉及的网络集合中共享相同连接模式的节点集群(块)来解开多部分网络的拓扑结构。通过期望-最大化算法的变分版本来估计模型参数。块的数量是使用专门为我们的模型设计的综合完全似然准则来选择的。仿真研究表明了推理策略的稳健性。最后,用MBM对生态学和民族生物学分别发布的两个数据集进行了分析,以说明其灵活性及其与真实数据集分析的相关性。推理过程在Github上提供的R包GREMLIN中实现(https://github.com/Demiperimetre/GREMLINhttps://github.com/Demiperimetre/GREMLIN)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Statistical Modelling
Statistical Modelling 数学-统计学与概率论
CiteScore
2.20
自引率
0.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: The primary aim of the journal is to publish original and high-quality articles that recognize statistical modelling as the general framework for the application of statistical ideas. Submissions must reflect important developments, extensions, and applications in statistical modelling. The journal also encourages submissions that describe scientifically interesting, complex or novel statistical modelling aspects from a wide diversity of disciplines, and submissions that embrace the diversity of applied statistical modelling.
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