Minimax rates of estimation for high-dimensional linear regression over $\ell_q$-balls
Garvesh Raskutti, Martin J. Wainwright, and Bin Yu

TL;DR
This paper characterizes the minimax rates of estimation for high-dimensional linear regression over -balls, establishing bounds for -losses and prediction error under regularity conditions on the design matrix.
Contribution
It provides the first comprehensive analysis of minimax rates for -regularized linear regression, including lower bounds and constructive upper bounds for -norms and prediction loss.
Findings
Minimax error scales as (rac{\, ext{log}\, p}{n})^{1-rac{}{2}}.
Lower bounds are derived using information-theoretic methods.
Least-squares over -balls achieves minimax rates, with =0 case compared to -relaxations.
Abstract
Consider the standard linear regression model , where is an observation vector, is a design matrix, is the unknown regression vector, and is additive Gaussian noise. This paper studies the minimax rates of convergence for estimation of for -losses and in the -prediction loss, assuming that belongs to an -ball for some . We show that under suitable regularity conditions on the design matrix , the minimax error in -loss and -prediction loss scales as . In addition, we provide lower bounds on minimax risks in -norms, for all $\rpar \in [1, +\infty], \rpar…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Probabilistic and Robust Engineering Design · Statistical Methods and Inference
