24: High-dimensional Partial Linear Model with Trend Filtering

Erikka Loftfield Co-Author
National Cancer Institute
 
Hyokyoung Hong Co-Author
NIH
 
Haolei Weng Co-Author
Michigan State University
 
Sang Kyu Lee First Author
National Cancer Institute
 
Sang Kyu Lee Presenting Author
National Cancer Institute
 
Wednesday, Aug 6: 10:30 AM - 12:20 PM
1784 
Contributed Posters 
Music City Center 
Understanding the links between diet, metabolic changes, and health outcomes is a key focus in nutritional science and broader biological research. Analyzing relationships, such as those between ultra-processed food (UPF) intake and metabolites, offers insights into potential biomarkers for diet-related diseases and public health applications. However, these analyses are challenging due to high-dimensional data structures and complex, often nonlinear associations between covariates and health outcomes. Traditional linear models and conventional nonparametric methods often lack the flexibility to accurately capture such complexities in biological data. To address these challenges, we propose a high-dimensional partial linear regression model that captures both linear and nonlinear effects, combining the interpretability of linear models with the adaptability of nonparametric approaches. Our model leverages trend filtering to handle local smoothness variations effectively and achieves minimax optimal rates, making it suitable for complex biological datasets. We apply this model to data from the Interactive Diet and Activity Tracking in AARP (IDATA) Study, demonstrating its utility.

Keywords

High-dimensional data analysis

Partial linear models

Trend filtering

Ultra-processed food biomarkers 

Main Sponsor

Korean International Statistical Society