资源论文Modular Community Detection in Networks Wenye Li Dale Schuurmans

Modular Community Detection in Networks Wenye Li Dale Schuurmans

2019-11-12 | |  72 |   42 |   0
Abstract Network community detection—the problem of dividing a network of interest into clusters for intelligent analysis—has recently attracted signi?cant attention in diverse ?elds of research. To discover intrinsic community structure a quantitative measure called modularity has been widely adopted as an optimization objective. Unfortunately, modularity is inherently NP-hard to optimize and approximate solutions must be sought if tractability is to be ensured. In practice, a spectral relaxation method is most often adopted, after which a community partition is recovered from relaxed fractional values by a rounding process. In this paper, we propose an iterative rounding strategy for identifying the partition decisions that is coupled with a fast constrained power method that sequentially achieves tighter spectral relaxations. Extensive evaluation with this coupled relaxation-rounding method demonstrates consistent and sometimes dramatic improvements in the modularity of the communities discovered.

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