Back To Index Previous Article Next Article Full Text

Statistica Sinica 35 (2025), 939-958

TRANSFER LEARNING FOR
HIGH-DIMENSIONAL QUANTILE REGRESSION
VIA CONVOLUTION SMOOTHING

Yijiao Zhang and Zhongyi Zhu*

Fudan University

Abstract: This paper studies the high-dimensional quantile regression problem under the transfer learning framework, where possibly related source datasets are available to make improvements on the estimation or prediction based solely on the target data. In the oracle case with known transferable sources, a smoothed two-step transfer learning algorithm based on convolution smoothing is proposed and the 𝓁1/𝓁2 estimation error bounds of the corresponding estimator are also established. To avoid including non-informative sources, we propose to select the transferable sources adaptively and establish its selection consistency under regular conditions. Monte Carlo simulations as well as an empirical analysis of gene expression data demonstrate the effectiveness of the proposed procedure.

Key words and phrases: High-dimensional data, quantile regression, regularization, smoothing, transfer learning.

Back To Index Previous Article Next Article Full Text