Counting Stars is Constant-Degree Optimal For Detecting Any Planted Subgraph
Abstract
We study the computational limits of the following general hypothesis testing problem. Let H=Hn be an arbitrary undirected graph on n vertices. We study the detection task between a ``null'' Erdos-R\'enyi random graph G(n,p) and a ``planted'' random graph which is the union of G(n,p) together with a random copy of H=Hn. Our notion of planted model is a generalization of a plethora of recently studied models initiated with the study of the planted clique model (Jerrum 1992), which corresponds to the special case where H is a k-clique and p=1/2. Over the last decade, several papers have studied the power of low-degree polynomials for limited choices of H's in the above task. In this work, we adopt a unifying perspective and characterize the power of constant degree polynomials for the detection task, when H=Hn is any arbitrary graph and for any p=(1). Perhaps surprisingly, we prove that the optimal constant degree polynomial is always given by simply counting stars in the input random graph. As a direct corollary, we conclude that the class of constant-degree polynomials is only able to ``sense'' the degree distribution of the planted graph H, and no other graph theoretic property of it.
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