English

Lasso Penalization for High-Dimensional Beta Regression Models: Computation, Analysis, and Inference

Methodology 2025-07-29 v1 Statistics Theory Machine Learning Statistics Theory

Abstract

Beta regression is commonly employed when the outcome variable is a proportion. Since its conception, the approach has been widely used in applications spanning various scientific fields. A series of extensions have been proposed over time, several of which address variable selection and penalized estimation, e.g., with an 1\ell_1-penalty (LASSO). However, a theoretical analysis of this popular approach in the context of Beta regression with high-dimensional predictors is lacking. In this paper, we aim to close this gap. A particular challenge arises from the non-convexity of the associated negative log-likelihood, which we address by resorting to a framework for analyzing stationary points in a neighborhood of the target parameter. Leveraging this framework, we derive a non-asymptotic bound on the 1\ell_1-error of such stationary points. In addition, we propose a debiasing approach to construct confidence intervals for the regression parameters. A proximal gradient algorithm is devised for optimizing the resulting penalized negative log-likelihood function. Our theoretical analysis is corroborated via simulation studies, and a real data example concerning the prediction of county-level proportions of incarceration is presented to showcase the practical utility of our methodology.

Keywords

Cite

@article{arxiv.2507.20079,
  title  = {Lasso Penalization for High-Dimensional Beta Regression Models: Computation, Analysis, and Inference},
  author = {Niloofar Ramezani and Martin Slawski},
  journal= {arXiv preprint arXiv:2507.20079},
  year   = {2025}
}
R2 v1 2026-07-01T04:20:31.194Z