Sufficient Dimension Reduction for the Conditional Quantiles of Functional Data

Eftychia Solea Co-Author
 
Shanshan Wang Co-Author
University of North Carolina at Charlotte
 
Jun Song Co-Author
Korea University
 
Eliana Christou First Author
 
Eliana Christou Presenting Author
 
Tuesday, Aug 5: 3:05 PM - 3:20 PM
1165 
Contributed Papers 
Music City Center 
Functional data analysis holds transformative potential across fields but often relies on mean regression, with limited focus on quantile regression. Furthermore, the infinite-dimensional nature of the functional predictors necessitates the use of dimension reduction techniques. Therefore, in this work, we address this gap by developing dimension reduction techniques for the conditional quantiles of functional data. The idea is to replace the functional predictors with a few finite predictors without losing important information on the conditional quantile while maintaining a flexible nonparametric model. We derive the convergence rates of the proposed estimators and demonstrate their finite sample performance using simulations and a real dataset from fMRI studies.

Keywords

conditional quantiles

dimension reduction

functional data 

Main Sponsor

Section on Nonparametric Statistics