Journal & Issues

Volume 24 (2023): Issue 1 (April 2023)

Volume 23 (2022): Issue 1 (March 2022)

Volume 22 (2021): Issue 1 (September 2021)

Volume 21 (2020): Issue 1 (January 2020)

Volume 20 (2019): Issue 4 (January 2019)

Volume 20 (2019): Issue 3 (January 2019)

Volume 20 (2019): Issue 2 (January 2019)

Volume 20 (2019): Issue 1 (January 2019)

Volume 19 (2018): Issue 1 (January 2018)

Volume 18 (2017): Issue 1 (January 2017)

Volume 17 (2016): Issue 1 (January 2016)

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Volume 15 (2014): Issue 1 (January 2014)

Volume 14 (2013): Issue 1 (January 2013)

Volume 13 (2012): Issue 1 (January 2012)

Volume 12 (2011): Issue 1 (January 2011)

Volume 11 (2010): Issue 1 (January 2010)

Volume 10 (2009): Issue 1 (January 2009)

Journal Details
Format
Journal
eISSN
1529-1227
First Published
31 Jan 2000
Publication timeframe
1 time per year
Languages
English

Search

Volume 15 (2014): Issue 1 (January 2014)

Journal Details
Format
Journal
eISSN
1529-1227
First Published
31 Jan 2000
Publication timeframe
1 time per year
Languages
English

Search

0 Articles
Open Access

Choosing a Clustering: An A Posteriori Method for Social Networks

Published Online: 14 Aug 2019
Page range: 1 - 21

Abstract

Abstract

Selecting an appropriate method of clustering for network data a priori can be a frustrating and confusing process. To address the problem we build on an a posteriori approach developed by Grimmer and King (2011) that compares hundreds of possible clustering methods at once through concise and intuitive visualization. We adapt this general method to the context of social networks, extend it with additional visualization features designed to enhance interpretability, and describe its principled use, outlining steps for selecting a class of methods to compare, interpreting visual output, and making a final selection. The interactive method, implemented in R, is demonstrated using Zachary’s karate club, a canonical dataset from the network literature.

Keywords

  • clustering
  • networks
  • social networks
  • visualization
  • interactive
  • community detection
  • cluster analysis
  • comparing clusterings
0 Articles
Open Access

Choosing a Clustering: An A Posteriori Method for Social Networks

Published Online: 14 Aug 2019
Page range: 1 - 21

Abstract

Abstract

Selecting an appropriate method of clustering for network data a priori can be a frustrating and confusing process. To address the problem we build on an a posteriori approach developed by Grimmer and King (2011) that compares hundreds of possible clustering methods at once through concise and intuitive visualization. We adapt this general method to the context of social networks, extend it with additional visualization features designed to enhance interpretability, and describe its principled use, outlining steps for selecting a class of methods to compare, interpreting visual output, and making a final selection. The interactive method, implemented in R, is demonstrated using Zachary’s karate club, a canonical dataset from the network literature.

Keywords

  • clustering
  • networks
  • social networks
  • visualization
  • interactive
  • community detection
  • cluster analysis
  • comparing clusterings