Exact clustering of weighted graphs via semidefinite programming

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作者
Pirinen, Aleksis [1 ]
Ames, Brendan [2 ]
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[1] Centre for Mathematical Sciences, Lund University, Lund, Sweden
[2] Department of Mathematics, University of Alabama, Alabama,AL,35487-0350, United States
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Graph theory - Recovery - Probability distributions - Stochastic models - Graphic methods;
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摘要
As a model problem for clustering, we consider the densest k-disjoint-clique problem of partitioning a weighted complete graph into k disjoint subgraphs such that the sum of the densities of these subgraphs is maximized. We establish that such subgraphs can be recovered from the solution of a particular semidefinite relaxation with high probability if the input graph is sampled from a distribution of clusterable graphs. Specifically, the semidefinite relaxation is exact if the graph consists of k large disjoint subgraphs, corresponding to clusters, with weight concentrated within these subgraphs, plus a moderate number of nodes not belonging to any cluster. Further, we establish that if noise is weakly obscuring these clusters, i.e, the between-cluster edges are assigned very small weights, then we can recover significantly smaller clusters. For example, we show that in approximately sparse graphs, where the between-cluster weights tend to zero as the size n of the graph tends to infinity, we can recover clusters of size polylogarithmic in n under certain conditions on the distribution of edge weights. Empirical evidence from numerical simulations is also provided to support these theoretical phase transitions to perfect recovery of the cluster structure. © 2019 Aleksis Pirinen and Brendan Ames.
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