Sharp global convergence guarantees for iterative nonconvex optimization: A Gaussian process perspective
Kabir Aladin Chandrasekher, Ashwin Pananjady, Christos Thrampoulidis

TL;DR
This paper introduces a Gaussian process-based framework to analyze the convergence of iterative nonconvex optimization algorithms in regression models with Gaussian covariates, providing sharp finite-sample guarantees.
Contribution
It develops a novel deterministic sequence to bound algorithm error, capturing convergence rates and error floors, applicable to various models and algorithms.
Findings
Higher-order algorithms can converge faster than first-order methods.
The convergence rate can be super-linear and sensitive to noise.
Numerical experiments confirm theoretical predictions.
Abstract
We consider a general class of regression models with normally distributed covariates, and the associated nonconvex problem of fitting these models from data. We develop a general recipe for analyzing the convergence of iterative algorithms for this task from a random initialization. In particular, provided each iteration can be written as the solution to a convex optimization problem satisfying some natural conditions, we leverage Gaussian comparison theorems to derive a deterministic sequence that provides sharp upper and lower bounds on the error of the algorithm with sample-splitting. Crucially, this deterministic sequence accurately captures both the convergence rate of the algorithm and the eventual error floor in the finite-sample regime, and is distinct from the commonly used "population" sequence that results from taking the infinite-sample limit. We apply our general framework…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Statistical Methods and Inference · Gaussian Processes and Bayesian Inference
