已知ERGM均衡点的连续时间图过程:背景回顾、扩展和综合。

IF 1.3 3区 社会学 Q3 SOCIOLOGY
Acta Sociologica Pub Date : 2024-01-01 Epub Date: 2023-02-27 DOI:10.1080/0022250x.2023.2180001
Carter T Butts
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引用次数: 0

摘要

在连续时间内展开的图形过程具有明显的理论和实践意义。特别有用的是那些长期行为趋同于已知形式的图分布的过程。在此,我们回顾了这种收敛的一些条件,并举例说明了新颖和/或已知的收敛过程。其中包括众所周知的面向随机行为者模型的子系列,以及时间和可分离时间指数族随机图模型的连续扩展。我们还评论了更广泛的网络动力学工作中的一些相关线索,这些线索为连续时间情况提供了额外的背景。连续时间展开的图过程是社会网络动力学的天然模型:此类模型能够直接表示结构在展开过程中的变化(而不是离散间隔的快照),不仅有望捕捉高时间分辨率的动态变化,还能轻松映射到经验数据,而无需预先选择定义动态变化的粒度水平。尽管对这类一般框架进行广泛研究的相对较少,但至少有一种(随机行为导向模型,或 SAOMs)可以说是社会科学中最成功、应用最广泛的模型系列之一(参见 Snijders (2001);Steglich 等人 (2010);Burk 等人 (2007);Sijtsema 等人 (2010);de la Haye 等人 (2011);Weerman (2011);Schaefer 和 Kreager (2020) 等)。使用其他连续时间图过程的工作也在社会科学领域(Koskinen 和 Snijders,2007 年;Koskinen 等人,2015 年;Stadtfeld 等人,2017 年;Hoffman 等人,2020 年)内外(Grazioli 等人,2019 年;Yu 等人,2020 年)得到了应用,这表明了进一步发展的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Time Graph Processes with Known ERGM Equilibria: Contextual Review, Extensions, and Synthesis.

Graph processes that unfold in continuous time are of obvious theoretical and practical interest. Particularly useful are those whose long-term behavior converges to a graph distribution of known form. Here, we review some of the conditions for such convergence, and provide examples of novel and/or known processes that do so. These include subfamilies of the well-known stochastic actor oriented models, as well as continuum extensions of temporal and separable temporal exponential family random graph models. We also comment on some related threads in the broader work on network dynamics, which provide additional context for the continuous time case. Graph processes that unfold in continuous time are natural models for social network dynamics: able to directly represent changes in structure as they unfold (rather than, e.g. as snapshots at discrete intervals), such models not only offer the promise of capturing dynamics at high temporal resolution, but are also easily mapped to empirical data without the need to preselect a level of granularity with respect to which the dynamics are defined. Although relatively few general frameworks of this type have been extensively studied, at least one (the stochastic actor-oriented models, or SAOMs) is arguably among the most successful and widely used families of models in the social sciences (see, e.g., Snijders (2001); Steglich et al. (2010); Burk et al. (2007); Sijtsema et al. (2010); de la Haye et al. (2011); Weerman (2011); Schaefer and Kreager (2020) among many others). Work using other continuous time graph processes has also found applications both within (Koskinen and Snijders, 2007; Koskinen et al., 2015; Stadtfeld et al., 2017; Hoffman et al., 2020) and beyond (Grazioli et al., 2019; Yu et al., 2020) the social sciences, suggesting the potential for further advances.

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来源期刊
Acta Sociologica
Acta Sociologica SOCIOLOGY-
CiteScore
4.00
自引率
0.00%
发文量
27
期刊介绍: Acta Sociologica is a peer reviewed journal which publishes papers on high-quality innovative sociology peer reviewed journal which publishes papers on high-quality innovative sociology carried out from different theoretical and methodological starting points, in the form of full-length original articles and review essays, as well as book reviews and commentaries. Articles that present Nordic sociology or help mediate between Nordic and international scholarly discussions are encouraged.
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