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Varying-coefficient models for dynamic networks

机译:动态网络的变化系数模型

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Dynamic networks are commonly used to model relational data that are observed over time. Statistical models for such data should capture both the temporal variation of the relational system as well as the structural dependencies within each network. As a consequence, effectively making inference on dynamic networks is a computationally challenging task, and many models are intractable even for moderately sized systems. In light of these challenges, a family of dynamic network models known as varying-coefficient exponential random graph models (VCERGMs) is proposed to characterize the evolution of network topology through smoothly varying parameters. The VCERGM provides an interpretable dynamic network model that enables the inference of temporal heterogeneity in dynamic networks. Estimation of the VCERGM is achieved via maximum pseudo-likelihood techniques, thereby providing a computationally tractable strategy for statistical inference of complex dynamic networks. Furthermore, a bootstrap hypothesis testing framework is presented for testing the temporal heterogeneity of an observed dynamic network sequence. Application to the U.S. Senate co-voting network and comprehensive simulation studies both reveal that the VCERGM provides relevant and interpretable patterns and has significant advantages over existing methods. (C) 2020 Elsevier B.V. All rights reserved.
机译:动态网络通常用于模拟随时间观察到的关系数据。这些数据的统计模型应该捕获关系系统的时间变化以及每个网络内的结构依赖性。因此,有效地对动态网络推断是一种计算具有挑战性的任务,即使对于中等大小的系统,许多型号也是棘手的。鉴于这些挑战,提出了一种称为变化系数指数随机图模型(VCERDMS)的动态网络模型的系列,以通过平稳变化的参数来表征网络拓扑的演变。 vcercm提供了一种可解释的动态网络模型,可以在动态网络中推动时间异质性。通过最大的伪似然技术实现VCERGM的估计,从而为复杂动态网络的统计推断提供了一种计算的促进策略。此外,介绍了用于测试观察到的动态网络序列的时间异质性的引导假设测试框架。在美国参议院共同投票网络和综合模拟研究中的应用既表明,VCERGM提供了相关和可解释的模式,并与现有方法具有显着的优势。 (c)2020 Elsevier B.V.保留所有权利。

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