Journal article
Simultaneous and temporal autoregressive network models
Network science (Cambridge University Press), Vol.6(2), pp.204-231
06/2018
DOI: 10.1017/nws.2017.36
Abstract
While logistic regression models are easily accessible to researchers, when applied to network data there are unrealistic assumptions made about the dependence structure of the data. For temporal networks measured in discrete time, recent work has made good advances (Almquist & Butts, 2014), but there is still the assumption that the dyads are conditionally independent given the edge histories. This assumption can be quite strong and is sometimes difficult to justify. If time steps are rather large, one would typically expect not only the existence of temporal dependencies among the dyads across observed time points but also the existence of simultaneous dependencies affecting how the dyads of the network co-evolve. We propose a general observation-driven model for dynamic networks that overcomes this problem by modeling both the mean and the covariance structures as functions of the edge histories using a flexible autoregressive approach. This approach can be shown to fit into a generalized linear mixed model framework. We propose a visualization method that provides evidence concerning the existence of simultaneous dependence. We describe a simulation study to determine the method's performance in the presence and absence of simultaneous dependence, and we analyze both a proximity network from conference attendees and a world trade network. We also use this last data set to illustrate how simultaneous dependencies become more prominent as the time intervals become coarser.
Details
- Title: Subtitle
- Simultaneous and temporal autoregressive network models
- Creators
- DANIEL K Sewell - Department of Biostatistics, University of Iowa, Iowa City, IA 52242, USA (e-mail: daniel-sewell@uiowa.edu)
- Resource Type
- Journal article
- Publication Details
- Network science (Cambridge University Press), Vol.6(2), pp.204-231
- DOI
- 10.1017/nws.2017.36
- ISSN
- 2050-1242
- eISSN
- 2050-1250
- Publisher
- Cambridge University Press
- Number of pages
- 28
- Language
- English
- Date published
- 06/2018
- Academic Unit
- Biostatistics; Public Policy Center (Archive)
- Record Identifier
- 9984214790002771
Metrics
3 Record Views