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Variable Selection and Regularization in Quantile Regression via Minimum Covariance Determinant Based Weights
Authors:Edmore Ranganai  Innocent Mudhombo
Institution:1.Department of Statistics, University of South Africa, Florida Campus, Private Bag X6, Florida Park, Roodepoort 1710, South Africa;2.Department of Accountancy, Vaal University of Technology, Vanderbijlpark Campus, Vanderbijlpark 1900, South Africa;
Abstract:The importance of variable selection and regularization procedures in multiple regression analysis cannot be overemphasized. These procedures are adversely affected by predictor space data aberrations as well as outliers in the response space. To counter the latter, robust statistical procedures such as quantile regression which generalizes the well-known least absolute deviation procedure to all quantile levels have been proposed in the literature. Quantile regression is robust to response variable outliers but very susceptible to outliers in the predictor space (high leverage points) which may alter the eigen-structure of the predictor matrix. High leverage points that alter the eigen-structure of the predictor matrix by creating or hiding collinearity are referred to as collinearity influential points. In this paper, we suggest generalizing the penalized weighted least absolute deviation to all quantile levels, i.e., to penalized weighted quantile regression using the RIDGE, LASSO, and elastic net penalties as a remedy against collinearity influential points and high leverage points in general. To maintain robustness, we make use of very robust weights based on the computationally intensive high breakdown minimum covariance determinant. Simulations and applications to well-known data sets from the literature show an improvement in variable selection and regularization due to the robust weighting formulation.
Keywords:weighted quantile regression  RIDGE penalty  LASSO penalty  elastic net penalty  high leverage points  collinearity influential points  minimum covariance determinant
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