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Functional linear quantile regression on a two-dimensional domain

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posted on 2024-10-08, 13:54 authored by Nan Zhang, Peng LiuPeng Liu, Linglong Kong, Bei Jiang, Jianhua Z Huang

This article considers the functional linear quantile regression which models the conditional quantile of a scalar response given a functional predictor over a two-dimensional domain. We propose an estimator for the slope function by minimizing the penalized empirical check loss function. Under the framework of reproducing kernel Hilbert space, the minimax rate of convergence for the regularized estimator is established. Using the theory of interpolation spaces on a two- or multi-dimensional domain, we develop a novel result on simultaneous diagonalization of the reproducing and covariance kernels, revealing the interaction of the two kernels in determining the optimal convergence rate of the estimator. Sufficient conditions are provided to show that our analysis applies to many situations, for example, when the covariance kernel is from the Matérn class, and the slope function belongs to a Sobolev space. We implement the interior point method to compute the regularized estimator and illustrate the proposed method by applying it to the hippocampus surface data in the ADNI study. 

History

School

  • Science

Department

  • Mathematical Sciences

Published in

Bernoulli

Volume

30

Issue

3

Pages

1800 - 1824

Publisher

Bernoulli Society for Mathematical Statistics and Probability

Version

  • VoR (Version of Record)

Rights holder

© ISI/BS

Publication date

2024-05-14

Copyright date

2024

ISSN

1350-7265

eISSN

1573-9759

Language

  • en

Depositor

Dr Peng Liu. Deposit date: 3 October 2024

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