A local algorithm for finding dense subgraphs

Author:

Andersen Reid1

Affiliation:

1. Microsoft Research, Redmond, WA

Abstract

We describe a local algorithm for finding subgraphs with high density, according to a measure of density introduced by Kannan and Vinay [1999]. The algorithm takes as input a bipartite graph G , a starting vertex v , and a parameter k , and outputs an induced subgraph of G . It is local in the sense that it does not examine the entire input graph; instead, it adaptively explores a region of the graph near the starting vertex. The running time of the algorithm is bounded by Ok 2 ), which depends on the maximum degree Δ, but is otherwise independent of the graph. We prove the following approximation guarantee: for any subgraph S with k′ vertices and density θ, there exists a set S ′ ⊆ S for which the algorithm outputs a subgraph with density Ω(θ/log Δ) whenever vS ′ and kk ′. We prove that S ′ contains at least half of the edges in S .

Publisher

Association for Computing Machinery (ACM)

Subject

Mathematics (miscellaneous)

Reference18 articles.

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4. Constructing Expander Graphs by 2-Lifts and Discrepancy vs. Spectral Gap

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