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Autori principali: Naik, Zehaan, Kundu, Debasis
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.19336
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author Naik, Zehaan
Kundu, Debasis
author_facet Naik, Zehaan
Kundu, Debasis
contents Least Absolute Deviations (LAD) regression provides a robust alternative to ordinary least squares by minimizing the sum of absolute residuals. However, its widespread use has been limited by the computational cost of existing solvers, particularly simplex-based methods in high-dimensional settings. We propose a coordinate descent algorithm for LAD regression that avoids matrix inversion, naturally accommodates the non-differentiability of the objective function, and remains well-defined even when the number of predictors exceeds the number of observations. The key observation is that each coordinate update reduces to a one-dimensional minimization admitting a closed-form solution given by a median or weighted median. The resulting algorithm has per-iteration complexity $O(p\,n \log n)$ and is provably convergent due to the convexity of the LAD objective and the exactness of each coordinate update. Experiments on synthetic and real datasets show that the method matches the accuracy of linear-programming-based LAD solvers while offering improved scalability and stability in high-dimensional regimes, including cases where $p \ge n$. The method is easy to implement, requires no specialized optimization software, and provides a practical tool for robust linear models.
format Preprint
id arxiv_https___arxiv_org_abs_2603_19336
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Coordinate Descent Algorithm for Least Absolute Deviations Regression
Naik, Zehaan
Kundu, Debasis
Methodology
62F35
Least Absolute Deviations (LAD) regression provides a robust alternative to ordinary least squares by minimizing the sum of absolute residuals. However, its widespread use has been limited by the computational cost of existing solvers, particularly simplex-based methods in high-dimensional settings. We propose a coordinate descent algorithm for LAD regression that avoids matrix inversion, naturally accommodates the non-differentiability of the objective function, and remains well-defined even when the number of predictors exceeds the number of observations. The key observation is that each coordinate update reduces to a one-dimensional minimization admitting a closed-form solution given by a median or weighted median. The resulting algorithm has per-iteration complexity $O(p\,n \log n)$ and is provably convergent due to the convexity of the LAD objective and the exactness of each coordinate update. Experiments on synthetic and real datasets show that the method matches the accuracy of linear-programming-based LAD solvers while offering improved scalability and stability in high-dimensional regimes, including cases where $p \ge n$. The method is easy to implement, requires no specialized optimization software, and provides a practical tool for robust linear models.
title Coordinate Descent Algorithm for Least Absolute Deviations Regression
topic Methodology
62F35
url https://arxiv.org/abs/2603.19336