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LOGISTIC NETWORK REGRESSION FOR SCALABLE ANALYSIS OF NETWORKS WITH JOINT EDGE/VERTEX DYNAMICS

机译:具有联合边缘/顶点动力学的网络可伸缩分析的Logistic网络回归

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摘要

Change in group size and composition has long been an important area of research in the social sciences. Similarly, interest in interaction dynamics has a long history in sociology and social psychology. However, the effects of endogenous group change on interaction dynamics are a surprisingly understudied area. One way to explore these relationships is through social network models. Network dynamics may be viewed as a process of change in the edge structure of a network, in the vertex set on which edges are defined, or in both simultaneously. Although early studies of such processes were primarily descriptive, recent work on this topic has increasingly turned to formal statistical models. Although showing great promise, many of these modern dynamic models are computationally intensive and scale very poorly in the size of the network under study and/or the number of time points considered. Likewise, currently used models focus on edge dynamics, with little support for endogenously changing vertex sets. Here, the authors show how an existing approach based on logistic network regression can be extended to serve as a highly scalable framework for modeling large networks with dynamic vertex sets. The authors place this approach within a general dynamic exponential family (exponential-family random graph modeling) context, clarifying the assumptions underlying the framework (and providing a clear path for extensions), and they show how model assessment methods for cross-sectional networks can be extended to the dynamic case. Finally, the authors illustrate this approach on a classic data set involving interactions among windsurfers on a California beach.
机译:团体规模和组成的变化长期以来一直是社会科学领域的重要研究领域。同样,对交互动力学的兴趣在社会学和社会心理学中有着悠久的历史。然而,内源性基团变化对相互作用动力学的影响是一个令人惊讶地未被研究的领域。探索这些关系的一种方法是通过社交网络模型。网络动态可被视为网络边缘结构,定义边缘的顶点集中或同时发生在两者之间的变化过程。尽管对此类过程的早期研究主要是描述性的,但有关该主题的最新工作已越来越多地转向正式的统计模型。尽管显示出巨大的希望,但许多现代动态模型的计算量很大,并且在研究的网络规模和/或所考虑的时间点数量方面,其伸缩性非常差。同样,当前使用的模型侧重于边缘动力学,很少支持内生变化的顶点集。在这里,作者展示了如何将基于逻辑网络回归的现有方法扩展为具有动态顶点集的大型网络建模的高度可扩展框架。作者将这种方法放在一般的动态指数族(指数族随机图建模)上下文中,阐明了框架的基础假设(并提供了清晰的扩展路径),并展示了横截面网络的模型评估方法如何能够扩展到动态案例。最后,作者在涉及加利福尼亚海滩风帆冲浪者之间相互作用的经典数据集上说明了这种方法。

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