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arxiv: 1308.4915 · v2 · pith:C4WXMBYLnew · submitted 2013-08-22 · 🧮 math.OC · cs.LG· stat.ML

Minimal Dirichlet energy partitions for graphs

classification 🧮 math.OC cs.LGstat.ML
keywords dirichletgraphsobjectiverelaxedalgorithmappliedclusteringclusters
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Motivated by a geometric problem, we introduce a new non-convex graph partitioning objective where the optimality criterion is given by the sum of the Dirichlet eigenvalues of the partition components. A relaxed formulation is identified and a novel rearrangement algorithm is proposed, which we show is strictly decreasing and converges in a finite number of iterations to a local minimum of the relaxed objective function. Our method is applied to several clustering problems on graphs constructed from synthetic data, MNIST handwritten digits, and manifold discretizations. The model has a semi-supervised extension and provides a natural representative for the clusters as well.

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