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Analytic strategies for longitudinal networks with missing data
Affiliation:1. University of Southern California, USA;2. RAND Corporation, USA;3. University of Chicago Urban Labs, USA;4. University of Florida, USA;1. Institut für Statistik, Ludwigs-Maximilians-Universität München, Germany;2. School of Mathematics and Statistics and Insight: The National Centre for Data Analytics, University College Dublin, Ireland;3. School of Mathematical Sciences, Dublin Institute of Technology, Ireland;1. Department of Industrial Engineering, Istanbul Bilgi University, 34060 Eyüp, Istanbul, Turkey;2. Department of International Relations, Koç University, Sarıyer 34450, Istanbul, Turkey;3. Department of Public Administration, University of Illinois at Chicago, Chicago, IL 06607, USA;1. School of Computer Science, Florida International University, 11200 SW 8th St, Miami, FL, USA;2. Xerox Innovation Group, 800 Phillips Rd, Webster, NY, USA;3. Nanjing University of Science and Technology, Nanjing 210094, PR China;1. Department of Statistics, University of Oxford, 24-29 St Giles’, OX1 3LB, United Kingdom;2. CDT in Cybersecurity, University of Oxford, United Kingdom
Abstract:Missing data are often problematic when analyzing complete longitudinal social network data. We review approaches for accommodating missing data when analyzing longitudinal network data with stochastic actor-based models. One common practice is to restrict analyses to participants observed at most or all time points, to achieve model convergence. We propose and evaluate an alternative, more inclusive approach to sub-setting and analyzing longitudinal network data, using data from a school friendship network observed at four waves (N = 694). Compared to standard practices, our approach retained more information from partially observed participants, generated a more representative analytic sample, and led to less biased model estimates for this case study. The implications and potential applications for longitudinal network analysis are discussed.
Keywords:Longitudinal analysis  Social networks  Stochastic actor-based model  SIENA  Analytic sample  Friendship network
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