Reduced varying coefficient models for regional quantile regression with multiple responses
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초록

Analyzing multiple outcome variables via regional quantile regression in high-dimensional settings poses significant statistical and computational challenges. In this paper, we propose a new framework that models multivariate quantile varying coefficients using principal component functions, enforcing a low-rank structure on the coefficient matrix to achieve parsimony and interpretability. Our approach augments this representation with a KNN-fused LASSO penalty to capture shared dynamic patterns and identify latent clusters within the principal components. Through comprehensive simulation studies, we demonstrate that our method consistently provides accurate estimates and robust performance under various high-dimensional scenarios. We further illustrate its practical utility with two real-world health datasets, where our approach uncovers complex, quantile-specific associations between predictors and multiple correlated outcomes across a time index.

키워드

KNN-fused LASSOmultiple responsenuclear normreduced varying coefficient modelregional quantile regressionstructured nonparametric regressionBIRTH-WEIGHTCARDIOVASCULAR EVENTSBLOOD-PRESSUREAPGAR SCORERISKAGESELECTIONSURVIVAL
제목
Reduced varying coefficient models for regional quantile regression with multiple responses
저자
Jung, WoorimPark, SeyoungHong, Hyokyoung G.Lee, Eun Ryung
DOI
10.1093/biomtc/ujag040
발행일
2026-03
유형
Article
저널명
Biometrics
82
1