Sum-of-Squares Lower Bounds for Sparse Independent Set
Chris Jones, Aaron Potechin, Goutham Rajendran, Madhur Tulsiani, Jeff, Xu

TL;DR
This paper establishes the first sum-of-squares lower bounds for the independent set problem in sparse random graphs, demonstrating computational hardness in a regime previously unexplored.
Contribution
It extends sum-of-squares lower bound techniques to sparse graphs, overcoming key technical challenges like low-degree distinguishers and matrix norm bounds.
Findings
Sum-of-squares fails to refute large independent sets in sparse graphs with high probability.
The true maximum independent set size is significantly smaller than the SoS lower bound threshold.
New techniques for matrix norm bounds in sparse graph matrices are developed.
Abstract
The Sum-of-Squares (SoS) hierarchy of semidefinite programs is a powerful algorithmic paradigm which captures state-of-the-art algorithmic guarantees for a wide array of problems. In the average case setting, SoS lower bounds provide strong evidence of algorithmic hardness or information-computation gaps. Prior to this work, SoS lower bounds have been obtained for problems in the "dense" input regime, where the input is a collection of independent Rademacher or Gaussian random variables, while the sparse regime has remained out of reach. We make the first progress in this direction by obtaining strong SoS lower bounds for the problem of Independent Set on sparse random graphs. We prove that with high probability over an Erdos-Renyi random graph with average degree , degree- SoS fails to refute the existence of an independent set of size $k…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Machine Learning and Algorithms · Stochastic Gradient Optimization Techniques
