Abstract

This paper considers robust variable selection in semiparametric modeling for longitudinal data with an unspecified dependence structure. First, by basis spline approximation and using a general formulation to treat mean, median, quantile and robust mean regressions in one setting, we propose a weighted M-type regression estimator, which achieves robustness against outliers in both the response and covariates directions, and can accommodate heterogeneity, and the asymptotic properties are also established. Furthermore, a penalized weighted M-type estimator is proposed, which can do estimation and select relevant nonparametric and parametric components simultaneously, and robustly. Without any specification of error distribution and intra-subject dependence structure, the variable selection method works beautifully, including consistency in variable selection and oracle property in estimation. Simulation studies also confirm our method and theories.

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