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Article
Visualizing Proximity Data
Field Methods (2007)
  • Rich DeJordy, Boston College
  • Stephen P. Borgatti, Boston College
  • Chris Roussin, Boston College
  • Daniel S. Halgin, Boston College
Abstract
In this article, the authors explore the use of graph layout algorithms for visualizing proximity matrices such as those obtained in cultural domain analysis. Traditionally, multidimensional scaling has been used for this purpose. The authors compare the two approaches to identify conditions when each approach is effective. As might be expected, they find that multidimensional scaling shines when the data are of low dimensionality and are compatible with the defining characteristics of Euclidean distances, such as symmetry and triangle inequality constraints. However, when one is working with data that do not fit these criteria, graph layout algorithms do a better job of communicating the structure of the data. In addition, graph layout algorithms lend themselves to interactive use, which can yield a deeper and more accurate understanding of the data.
Keywords
  • multidimensional scaling,
  • visualization,
  • social network analysis,
  • graph layout algorithms,
  • cultural domain analysis,
  • proximity matrices
Publication Date
August, 2007
Citation Information
Rich DeJordy, Stephen P. Borgatti, Chris Roussin and Daniel S. Halgin. "Visualizing Proximity Data" Field Methods Vol. 19 Iss. 3 (2007)
Available at: http://works.bepress.com/daniel_halgin/1/