Online Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 425 - Modern Statistical Learning of Complex Data
Type: Invited
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: Section on Nonparametric Statistics
Abstract #316772
Title: Sparse Modeling of Functional Linear Regression via Fused Lasso with Application to Genotype-by-Environment Interaction Studies
Author(s): Shan Yu* and Lily Wang and Dan Nettleton and Aaron Kusmec
Companies: University of Virginia and Iowa State University and Iowa State University and Iowa State University
Keywords: Functional regression; Fusion learning; Gene environment interaction; Spline approximation; ADMM algorithm
Abstract:

We propose a sparse multi-group functional linear regression model to simultaneously estimate multiple coefficient functions and identify groups, such that coefficient functions are identical within groups and distinct across groups. By borrowing information from relevant subgroups of subjects, our method enhances estimation efficiency while preserving heterogeneity in model parameters and coefficient functions. We use an adaptive fused lasso penalty to shrink coefficient estimates to a common value within each group. We also establish theoretical properties of the proposed estimators. To enhance computation efficiency and incorporate neighborhood information, we propose to use graph-constrained adaptive lasso with a highly efficient algorithm. Two Monte Carlo simulation studies have been conducted to study the finite-sample performance of the proposed method. The proposed method is applied to sorghum flowering-time data and hybrid maize grain yields from the Genomes to Fields consortium.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2021 program