posted on 2025-08-14, 16:34authored byMeichen Liu, Matthew Pietrosanu, Peng LiuPeng Liu, Bei Jiang, Xingcai Zhou, Linglong Kong
<p dir="ltr">Expectile regression is a useful alternative to conditional mean and quantile regression for characterizing a conditional response distribution, especially when the distribution is asymmetric or when its tails are of interest. In this article, we propose a class of scalar‐on‐function linear expectile regression models where the functional slope parameter is assumed to reside in a reproducing kernel Hilbert space (RKHS). Our approach addresses numerous drawbacks to existing estimators based on functional principal components analysis (FPCA), which make implicit assumptions about RKHS eigenstructure. We show that our proposed estimator can achieve an optimal rate of convergence by establishing asymptotic minimax lower and upper bounds on the prediction error. Under this framework, we propose a flexible implementation based on the alternating direction method of multipliers algorithm. Simulation studies and an analysis of real‐world neuroimaging data validate our methodology and theoretical findings and, furthermore, suggest its superiority over FPCA‐based approaches in numerous settings.</p>
Funding
Natural Sciences and Engineering Research Council of Canada (NSERC) Canada Research Chair in Statistical Learning National Social Science Fund of China National Natural Science Foundation of China China Postdoctoral Science Foundation. Grant Numbers: 19BTJ034, 12171242, 2018T110422, 2016M590396
This is the peer reviewed version of the following article: Liu, M., Pietrosanu, M., Liu, P., Jiang, B., Zhou, X., Kong, L. and the Alzheimer's Disease Neuroimaging Initiative (2022), Reproducing kernel-based functional linear expectile regression. Can J Statistics, 50: 241-266. https://doi.org/10.1002/cjs.11679, which has been published in final form at https://doi.org/10.1002/cjs.11679. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Use of Self-Archived Versions. This article may not be enhanced, enriched or otherwise transformed into a derivative work, without express permission from Wiley or by statutory rights under applicable legislation. Copyright notices must not be removed, obscured or modified. The article must be linked to Wiley’s version of record on Wiley Online Library and any embedding, framing or otherwise making available the article or pages thereof by third parties from platforms, services and websites other than Wiley Online Library must be prohibited.