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Spectral Algorithms Optimally Recover (Censored) Planted Dense Subgraphs

Abstract

We study spectral algorithms for the planted dense subgraph problem (PDS), as well as for a censored variant (CPDS) of PDS, where the edge statuses are missing at random. More precisely, in the PDS model, we consider nn vertices and a random subset of vertices SS^{\star} of size Ω(n)\Omega(n), such that two vertices share an edge with probability pp if both of them are in SS^{\star}, and all other edges are present with probability qq, independently. The goal is to recover SS^{\star} from one observation of the network. In the CPDS model, edge statuses are revealed with probability tlognn\frac{t \log n}{n}. For the PDS model, we show that a simple spectral algorithm based on the top two eigenvectors of the adjacency matrix can recover SS^{\star} up to the information theoretic threshold. Prior work by Hajek, Wu and Xu required a less efficient SDP based algorithm to recover SS^{\star} up to the information theoretic threshold. For the CDPS model, we obtain the information theoretic limit for the recovery problem, and further show that a spectral algorithm based on a special matrix called the signed adjacency matrix recovers SS^{\star} up to the information theoretic threshold.

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