Multiobjective blockmodeling for social network analysis.

Academic Article

Abstract

  • To date, most methods for direct blockmodeling of social network data have focused on the optimization of a single objective function. However, there are a variety of social network applications where it is advantageous to consider two or more objectives simultaneously. These applications can broadly be placed into two categories: (1) simultaneous optimization of multiple criteria for fitting a blockmodel based on a single network matrix and (2) simultaneous optimization of multiple criteria for fitting a blockmodel based on two or more network matrices, where the matrices being fit can take the form of multiple indicators for an underlying relationship, or multiple matrices for a set of objects measured at two or more different points in time. A multiobjective tabu search procedure is proposed for estimating the set of Pareto efficient blockmodels. This procedure is used in three examples that demonstrate possible applications of the multiobjective blockmodeling paradigm.
  • Authors

  • Brusco, Michael
  • Doreian, Patrick
  • Steinley, Douglas
  • Satornino, Cinthia
  • Status

    Publication Date

  • July 2013
  • Published In

  • Psychometrika  Journal
  • Keywords

  • Algorithms
  • Computer Simulation
  • Humans
  • Male
  • Models, Psychological
  • Monks
  • Social Support
  • Digital Object Identifier (doi)

    Pubmed Id

  • 25106397
  • Start Page

  • 498
  • End Page

  • 525
  • Volume

  • 78
  • Issue

  • 3