Publication

Information Theoretic Comparison of Stochastic Graph Models: Some Experiments

Authors:

Lang, K.J.

Source:

WAW 2009, Springer, Volume 5427, Barcelona, p.1-12 (2009)

ISBN:

978-3-540-95994-6

Abstract:

The Modularity-Q measure of community structure is known to falsely ascribe community structure to random graphs, at least when it is naively applied. Although Q is motivated by a simple kind of comparison of stochastic graph models, it has been suggested that a more careful comparison in an information-theoretic framework might avoid problems like this one. Most earlier papers exploring this idea have ignored the issue of skewed degree distributions and have only done experiments on a few small graphs. By means of a large-scale experiment on over 100 large complex networks, we have found that modeling the degree distribution is essential. Once this is done, the resulting information-theoretic clustering measure does indeed avoid Q's bad property of seeing cluster structure in random graphs.

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