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Quantile Regression via an MM Algorithm
328
Citations
34
References
2000
Year
Mm AlgorithmDensity EstimationQuantile Regression AlgorithmEngineeringData ScienceRobust StatisticUncertainty QuantificationQuantile RegressionEstimation StatisticStatistical InferenceAbstract Quantile RegressionEstimation TheoryStatisticsQuantitative ManagementLinear Optimization
Abstract Quantile regression is an increasingly popular method for estimating the quantiles of a distribution conditional on the values of covariates. Regression quantiles are robust against the influence of outliers and, taken several at a time, they give a more complete picture of the conditional distribution than a single estimate of the center. This article first presents an iterative algorithm for finding sample quantiles without sorting and then explores a generalization of the algorithm to nonlinear quantile regression. Our quantile regression algorithm is termed an MM, or majorize—minimize, algorithm because it entails majorizing the objective function by a quadratic function followed by minimizing that quadratic. The algorithm is conceptually simple and easy to code, and our numerical tests suggest that it is computationally competitive with a recent interior point algorithm for most problems.
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