DocumentCode :
17587
Title :
Improved Graph Clustering
Author :
Yudong Chen ; Sanghavi, Sujay ; Huan Xu
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of California at Berkeley, Berkeley, CA, USA
Volume :
60
Issue :
10
fYear :
2014
fDate :
Oct. 2014
Firstpage :
6440
Lastpage :
6455
Abstract :
Graph clustering involves the task of dividing nodes into clusters, so that the edge density is higher within clusters as opposed to across clusters. A natural, classic, and popular statistical setting for evaluating solutions to this problem is the stochastic block model, also referred to as the planted partition model. In this paper, we present a new algorithm-a convexified version of maximum likelihood-for graph clustering. We show that, in the classic stochastic block model setting, it outperforms existing methods by polynomial factors when the cluster size is allowed to have general scalings. In fact, it is within logarithmic factors of known lower bounds for spectral methods, and there is evidence suggesting that no polynomial time algorithm would do significantly better. We then show that this guarantee carries over to a more general extension of the stochastic block model. Our method can handle the settings of semirandom graphs, heterogeneous degree distributions, unequal cluster sizes, unaffiliated nodes, partially observed graphs, planted clique/coloring, and so on. In particular, our results provide the best exact recovery guarantees to date for the planted partition, planted k-disjoint-cliques and planted noisy coloring models with general cluster sizes; in other settings, we match the best existing results up to logarithmic factors.
Keywords :
convex programming; graph colouring; maximum likelihood estimation; social networking (online); stochastic processes; convex optimization; edge density; graph clustering; heterogeneous degree distributions; maximum likelihood estimation; planted clique; planted k-disjoint-cliques; planted noisy coloring models; planted partition model; semirandom graphs; stochastic block model; Algorithm design and analysis; Clustering algorithms; Computational modeling; Maximum likelihood estimation; Partitioning algorithms; Standards; Stochastic processes; Graph clustering; convex optimization; maximum likehood estimator; stochastic block model;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2014.2346205
Filename :
6873307
Link To Document :
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