Journal article
Change we can believe in: Comparing longitudinal network models on consistency, interpretability and predictive power
P Block, J Koskinen, J Hollway, C Steglich, C Stadtfeld
Social Networks | ELSEVIER | Published : 2018
Abstract
While several models for analysing longitudinal network data have been proposed, their main differences, especially regarding the treatment of time, have not been discussed extensively in the literature. However, differences in treatment of time strongly impact the conclusions that can be drawn from data. In this article we compare auto-regressive network models using the example of TERGMs – a temporal extensions of ERGMs – and process-based models using SAOMs as an example. We conclude that the TERGM has, in contrast to the ERGM, no consistent interpretation on tie-level probabilities, as well as no consistent interpretation on processes of network change. Further, parameters in the TERGM a..
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