Is Planted Coloring Easier than Planted Clique?
Pravesh K. Kothari, Santosh S. Vempala, Alexander S. Wein, Jeff Xu

TL;DR
This paper investigates the computational difficulty of recovering planted colorings and refuting non-colorability in random graphs, establishing hardness results in the low-degree polynomial model and highlighting differences based on the number of colors.
Contribution
It introduces the first explicit formulation of refutation problems within the low-degree polynomial framework and compares the complexity of planted coloring and clique problems.
Findings
Recovering planted q-colorings is as hard as planted clique for large clique sizes.
Refuting q-colorability is hard for q much larger than n^{2/3} and easy when q is around n^{1/2}.
The paper develops new techniques involving non-standard distributions for proving low-degree hardness.
Abstract
We study the computational complexity of two related problems: recovering a planted -coloring in , and finding efficiently verifiable witnesses of non--colorability (a.k.a. refutations) in . Our main results show hardness for both these problems in a restricted-but-powerful class of algorithms based on computing low-degree polynomials in the inputs. The problem of recovering a planted -coloring is equivalent to recovering disjoint planted cliques that cover all the vertices -- a potentially easier variant of the well-studied planted clique problem. Our first result shows that this variant is as hard as the original planted clique problem in the low-degree polynomial model of computation: each clique needs to have size for efficient recovery to be possible. For the related variant where the cliques cover a -fraction of the…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Commutative Algebra and Its Applications · Cryptography and Data Security
