Semirandom Planted Clique via 1-norm Isometry Property
Venkatesan Guruswami, Hsin-Po Wang

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Abstract
We give a polynomial-time algorithm that finds a planted clique of size in the semirandom model, improving the state-of-the-art bound. This concerns finding the planted subset of vertices of a graph on , where the induced subgraph is complete, the cut edges in are random, and the remaining edges in are adversarial. An elegant greedy algorithm by Blasiok, Buhai, Kothari, and Steurer [BBK24] finds by sampling inner products of the columns of the adjacency matrix of , and checking if they deviate significantly from typical inner products of random vectors. Their analysis uses a suitably random matrix that, with high probability, satisfies a certain restricted isometry property. Inspired by Wootters's work on list decoding, we put…
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