资源论文High-dimensional Non-Gaussian Single Index Models via Thresholded Score Function Estimation

High-dimensional Non-Gaussian Single Index Models via Thresholded Score Function Estimation

2020-03-10 | |  76 |   51 |   0

Abstract

We consider estimating the parametric component of single index models in high dimensions. Compared with existing work, we do not require the covariate to be normally distributed. Utilizing Stein’s Lemma, we propose estimators based on the score function of the covariate. Moreover, to handle score function and response variables that are heavy-tailed, our estimators are constructed via carefully thresholding their empirical counterparts. Under a bounded fourth moment condition, we establish optimal statistical rates of con vergence for the proposed estimators. Extensive numerical experiments are provided to back up our theory.

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