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A multilayer exponential random graph modelling approach for weighted networks

机译:加权网络的多层指数随机图建模方法

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A new modelling approach for the analysis of weighted networks with ordinal/polytomous dyadic values is introduced. Specifically, it is proposed to model the weighted network connectivity structure using a hierarchical multilayer exponential random graph model (ERGM) generative process where each network layer represents a different ordinal dyadic category. The network layers are assumed to be generated by an ERGM process conditional on their closest lower network layers. A crucial advantage of the proposed method is the possibility of adopting the binary network statistics specification to describe both the between-layer and across-layer network processes and thus facilitating the interpretation of the parameter estimates associated to the network effects included in the model. The Bayesian approach provides a natural way to quantify the uncertainty associated to the model parameters. From a computational point of view, an extension of the approximate exchange algorithm is proposed to sample from the doubly-intractable parameter posterior distribution. A simulation study is carried out on artificial data and applications of the methodology are illustrated on well-known datasets. Finally, a goodness-of-fit diagnostic procedure for model assessment is proposed. (C) 2019 Elsevier B.V. All rights reserved.
机译:介绍了具有序数/多元素二次值的加权网络分析的新建模方法。具体地,建议使用分层多层指数随机图模型(ERGM)生成过程来模拟加权网络连接结构,其中每个网络层代表不同的序数二进制类别。假设网络层由其最近的下部网络层上的ERGM处理条件生成。所提出的方法的一个重要优点是采用二进制网络统计规范来描述层和跨层之间的方法,从而促进与模型中包括的网络效应相关联的参数估计的解释。贝叶斯方法提供了一种自然的方式来量化与模型参数相关的不确定性。从计算的视点来看,提出了近似交换算法的扩展,以从双重难以处理的参数后部分布来采样。对人工数据进行仿真研究,并在众所周知的数据集上示出了方法的应用。最后,提出了适用于模型评估的优良诊断程序。 (c)2019年Elsevier B.V.保留所有权利。

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