Statistical-Computational Tradeoffs in Mixed Sparse Linear Regression
Gabriel Arpino, Ramji Venkataramanan

TL;DR
This paper investigates the computational and statistical limits of mixed sparse linear regression, revealing a narrow hard regime, establishing a tradeoff between sample size and runtime, and proposing an efficient thresholding algorithm that matches optimal sample complexity.
Contribution
It identifies a narrow computationally hard regime in mixed sparse linear regression and introduces a simple, efficient algorithm that achieves optimal sample complexity outside this regime.
Findings
Existence of a narrow computational hardness regime.
A smooth tradeoff between sample complexity and runtime.
A simple thresholding algorithm that is order-optimal for support recovery.
Abstract
We consider the problem of mixed sparse linear regression with two components, where two real -sparse signals are to be recovered from unlabelled noisy linear measurements. The sparsity is allowed to be sublinear in the dimension, and additive noise is assumed to be independent Gaussian with variance . Prior work has shown that the problem suffers from a -to- statistical-to-computational gap, resembling other computationally challenging high-dimensional inference problems such as Sparse PCA and Robust Sparse Mean Estimation; here is the signal-to-noise ratio. We establish the existence of a more extensive computational barrier for this problem through the method of low-degree polynomials, but show that the problem is computationally hard only in a very narrow symmetric parameter regime. We identify a smooth…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Machine Learning and Algorithms · Statistical Methods and Inference
MethodsLinear Regression · Principal Components Analysis
