Publication | Open Access
The Gaussian hare and the Laplacian tortoise: computability of squared-error versus absolute-error estimators
552
Citations
41
References
1997
Year
Mathematical ProgrammingComputational SpeedParameter EstimationEngineeringStatistical FoundationComputational ComplexityEmpirical AlgorithmicsUncertainty QuantificationApproximate ComputingParameterized AlgorithmLaplacian TortoiseEstimation TheoryApproximation TheoryStatisticsLarge Scale OptimizationAbsolute ErrorsComputer ScienceAlgorithmic Information TheoryGaussian HareInterior Point MethodsStatistical Inference
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.
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