Autotune: fast, accurate, and automatic tuning parameter selection for Lasso
Abstract
Least absolute shrinkage and selection operator (Lasso), a popular method for high-dimensional regression, is now used widely for estimating high-dimensional time series models such as the vector autoregression (VAR). Selecting its tuning parameter efficiently and accurately remains a challenge, despite the abundance of available methods for doing so. We propose , a strategy for Lasso to automatically tune itself by optimizing a penalized Gaussian log-likelihood alternately over regression coefficients and noise standard deviation. Using extensive simulation experiments on regression and VAR models, we show that is faster, and provides better generalization and model selection than established alternatives in low signal-to-noise regimes. In the process, provides a new estimator of noise standard deviation that can be used for high-dimensional inference, and a new visual diagnostic procedure for checking the sparsity assumption on regression coefficients. Finally, we demonstrate the utility of on a real-world financial data set. An R package based on C++ is also made publicly available on Github.
Cite
@article{arxiv.2512.11139,
title = {Autotune: fast, accurate, and automatic tuning parameter selection for Lasso},
author = {Tathagata Sadhukhan and Ines Wilms and Stephan Smeekes and Sumanta Basu},
journal= {arXiv preprint arXiv:2512.11139},
year = {2025}
}
Comments
53 pages, 35 figures