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Fast meta-analytic approximations for relational event models: applications to data streams and multilevel data

Fabio Vieira (), Roger Leenders () and Joris Mulder ()
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Fabio Vieira: Tilburg University
Roger Leenders: Tilburg University
Joris Mulder: Tilburg University

Journal of Computational Social Science, 2024, vol. 7, issue 2, No 25, 1823-1859

Abstract: Abstract Large relational-event history data stemming from large networks are becoming increasingly available due to recent technological developments (e.g. digital communication, online databases, etc). This opens many new doors to learn about complex interaction behavior between actors in temporal social networks. The relational event model has become the gold standard for relational event history analysis. Currently, however, the main bottleneck to fit relational events models is of computational nature in the form of memory storage limitations and computational complexity. Relational event models are therefore mainly used for relatively small data sets while larger, more interesting datasets, including multilevel data structures and relational event data streams, cannot be analyzed on standard desktop computers. This paper addresses this problem by developing approximation algorithms based on meta-analysis methods that can fit relational event models significantly faster while avoiding the computational issues. In particular, meta-analytic approximations are proposed for analyzing streams of relational event data, multilevel relational event data and potentially combinations thereof. The accuracy and the statistical properties of the methods are assessed using numerical simulations. Furthermore, real-world data are used to illustrate the potential of the methodology to study social interaction behavior in an organizational network and interaction behavior among political actors. The algorithms are implemented in the publicly available R package ’remx’.

Keywords: Relational event history; Bayesian inference; Multilevel analysis; Social networks; Data streams; Meta-analysis (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/s42001-024-00290-7

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