The Gaussian hare and the Laplacian tortoise: computability of squared-error versus absolute-error estimators
Open Access
- 1 November 1997
- journal article
- Published by Institute of Mathematical Statistics in Statistical Science
- Vol. 12 (4) , 279-300
- https://doi.org/10.1214/ss/1030037960
Abstract
Since the time of Gauss, it has been generally accepted that $\ell_2$-methods of combining observations by minimizing sums of squared errors have significant computational advantages over earlier $\ell_1$-methods based on minimization of absolute errors advocated by Boscovich, Laplace and others. However, $\ell_1$-methods are known to have significant robustness advantages over $\ell_2$-methods in many applications, and related quantile regression methods provide a useful, complementary approach to classical least-squares estimation of statistical models. Combining recent advances in interior point methods for solving linear programs with a new statistical preprocessing approach for $\ell_1$-type problems, we obtain a 10- to 100-fold improvement in computational speeds over current (simplex-based) $\ell_1$-algorithms in large problems, demonstrating that $\ell_1$-methods can be made competitive with $\ell_2$-methods in terms of computational speed throughout the entire range of problem sizes. Formal complexity results suggest that $\ell_1$-regression can be made faster than least-squares regression for n sufficiently large and p modest.Keywords
This publication has 44 references indexed in Scilit:
- The demand for alcohol: The differential response to priceJournal of Health Economics, 1995
- Quantile regression, Box-Cox transformation model, and the U.S. wage structure, 1963–1987Journal of Econometrics, 1995
- Degeneracy in interior point methods for linear programming: a surveyAnnals of Operations Research, 1993
- Probabilistic Analysis in Linear ProgrammingStatistical Science, 1993
- Tests of linear hypotheses based on regression rank scoresJournal of Nonparametric Statistics, 1993
- Regression Rank Scores and Regression QuantilesThe Annals of Statistics, 1992
- Algorithm AS 229: Computing Regression QuantilesJournal of the Royal Statistical Society Series C: Applied Statistics, 1987
- A modification of karmarkar's linear programming algorithmAlgorithmica, 1986
- Descriptive statistics for multivariate distributionsStatistics & Probability Letters, 1983
- Algorithm 478: Solution of an Overdetermined System of Equations in the l1 Norm [F4]Communications of the ACM, 1974