Nonlinear Random Matrices and Applications to the Sum of Squares Hierarchy
Goutham Rajendran

TL;DR
This paper introduces new tools in nonlinear random matrix theory to analyze the Sum of Squares hierarchy's performance on average-case problems, providing lower bounds and insights into computational complexity.
Contribution
It develops general-purpose tools for analyzing random matrices of independent variables and applies them to establish lower bounds for the SoS hierarchy on key problems.
Findings
Subexponential-time SoS lower bounds for key problems
Development of matrix concentration inequalities for functions of independent variables
Evidence supporting the low-degree likelihood ratio hypothesis
Abstract
We develop new tools in the theory of nonlinear random matrices and apply them to study the performance of the Sum of Squares (SoS) hierarchy on average-case problems. The SoS hierarchy is a powerful optimization technique that has achieved tremendous success for various problems in combinatorial optimization, robust statistics and machine learning. It's a family of convex relaxations that lets us smoothly trade off running time for approximation guarantees. In recent works, it's been shown to be extremely useful for recovering structure in high dimensional noisy data. It also remains our best approach towards refuting the notorious Unique Games Conjecture. In this work, we analyze the performance of the SoS hierarchy on fundamental problems stemming from statistics, theoretical computer science and statistical physics. In particular, we show subexponential-time SoS lower bounds for…
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Taxonomy
TopicsRandom Matrices and Applications · Statistical Mechanics and Entropy · Markov Chains and Monte Carlo Methods
