Semi-Random Sparse Recovery in Nearly-Linear Time
Jonathan A. Kelner, Jerry Li, Allen Liu, Aaron Sidford, Kevin Tian

TL;DR
This paper introduces a robust, nearly-linear time algorithm for sparse recovery that withstands semi-random adversarial models, improving practical reliability over existing fast methods.
Contribution
The authors develop a new iterative algorithm for sparse recovery that is provably robust to semi-random models and extends to weaker generative assumptions, achieving near-linear time complexity.
Findings
Algorithm achieves information-theoretic optimal recovery in nearly-linear time.
Method remains robust under semi-random adversarial models.
Extends to weaker models with sublinear runtime in some regimes.
Abstract
Sparse recovery is one of the most fundamental and well-studied inverse problems. Standard statistical formulations of the problem are provably solved by general convex programming techniques and more practical, fast (nearly-linear time) iterative methods. However, these latter "fast algorithms" have previously been observed to be brittle in various real-world settings. We investigate the brittleness of fast sparse recovery algorithms to generative model changes through the lens of studying their robustness to a "helpful" semi-random adversary, a framework which tests whether an algorithm overfits to input assumptions. We consider the following basic model: let be a measurement matrix which contains an unknown subset of rows which are bounded and satisfy the restricted isometry property (RIP), but is…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced MRI Techniques and Applications · Stochastic Gradient Optimization Techniques
