Recovering Nonuniform Planted Partitions via Iterated Projection
Sam Cole

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Abstract
In the planted partition problem, the vertices of a random graph are partitioned into "clusters," and edges between vertices in the same cluster and different clusters are included with constant probability and , respectively (where ). We give an efficient spectral algorithm that recovers the clusters with high probability, provided that the sizes of any two clusters are either very close or separated by . We also discuss a generalization of planted partition in which the algorithm's input is not a random graph, but a random real symmetric matrix with independent above-diagonal entries. Our algorithm is an adaptation of a previous algorithm for the uniform case, i.e., when all clusters are size . The original algorithm recovers the clusters one by one via iterated projection: it constructs the…
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Taxonomy
TopicsRandom Matrices and Applications · Topological and Geometric Data Analysis · Advanced Combinatorial Mathematics
