Spectral Algorithms Optimally Recover (Censored) Planted Dense Subgraphs

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 vertices and a random subset of vertices of size , such that two vertices share an edge with probability if both of them are in , and all other edges are present with probability , independently. The goal is to recover from one observation of the network. In the CPDS model, edge statuses are revealed with probability . For the PDS model, we show that a simple spectral algorithm based on the top two eigenvectors of the adjacency matrix can recover up to the information theoretic threshold. Prior work by Hajek, Wu and Xu required a less efficient SDP based algorithm to recover 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 up to the information theoretic threshold.
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