Missing Data Augmentation for Bayesian Multiplex ERGMs

Robert Krause, Alberto Caimo

Research output: Contribution to conferencePaperpeer-review

Abstract

In this paper we present an estimation algorithm for Bayesian multiplex exponential random graphs (BmERGMs) under missing net- work data. Social actors are often connected with more than one type of relation, thus forming a multiplex network. It is important to consider these multiplex structures simultaneously when analyzing a multiplex network. The importance of proper models of multiplex network structures is even more pronounced under the issue of missing network data. The proposed algorithm is able to estimate BmERGMs under missing data and can be used to obtain proper multiple imputations for multiplex network structures. It is an extension of Bayesian exponential random graphs (BERGMs) as implemented in the Bergm package in R. We demonstrate the algorithm on a well known example, with and without artificially simulated missing data.
Original languageEnglish
Pages63-72
DOIs
Publication statusPublished - 2019
EventInternational Workshop on Complex Networks -
Duration: 1 Jan 2019 → …

Conference

ConferenceInternational Workshop on Complex Networks
Period1/01/19 → …

Keywords

  • Bayesian multiplex exponential random graphs
  • missing network data
  • multiplex network
  • multiple imputations
  • Bergm package

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