Feb. 2, 2024, 3:47 p.m. | Reese Pathak Cong Ma

stat.ML updates on arXiv.org arxiv.org

This paper investigates the effect of the design matrix on the ability (or inability) to estimate a sparse parameter in linear regression. More specifically, we characterize the optimal rate of estimation when the smallest singular value of the design matrix is bounded away from zero. In addition to this information-theoretic result, we provide and analyze a procedure which is simultaneously statistically optimal and computationally efficient, based on soft thresholding the ordinary least squares estimator. Most surprisingly, we show that the …

design information lasso linear linear regression math.st matrix paper rate regression singular stat.ml stat.th value

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