An ADMM approach for multi-response regression with overlapping groups and interaction effects

In this paper, we consider the regularized multi-response regression problem where there exists some structural relation within the responses and also between the covariates and a set of modifying variables. To handle this problem, we propose MADMMplasso, a novel regularized regression method. This method is able to find covariates and their corresponding interactions, with some joint association with multiple related responses. We allow the interaction term between covariate and modifying variable to be included in a (weak) asymmetrical hierarchical manner by first considering whether the corresponding covariate main term is in the model. For parameter estimation, we develop an ADMM algorithm that allows us to implement the overlapping groups in a simple way. The results from the simulations and analysis of a pharmacogenomic screen data set show that the proposed method has an advantage in handling correlated responses and interaction effects, both with respect to prediction and variable selection performance.

READ FULL TEXT
research
07/06/2019

The revisited knockoffs method for variable selection in L1-penalised regressions

We consider the problem of variable selection in regression models. In p...
research
12/26/2022

Bayesian indicator variable selection of multivariate response with heterogeneous sparsity for multi-trait fine mapping

Variable selection has been played a critical role in contemporary stati...
research
06/29/2023

Estimation and variable selection in a joint model of survival times and longitudinal outcomes with random effects

This paper considers a joint survival and mixed-effects model to explain...
research
02/08/2019

Penalized linear regression with high-dimensional pairwise screening

In variable selection, most existing screening methods focus on marginal...
research
01/09/2023

Locally sparse quantile estimation for a partially functional interaction model

Functional data analysis has been extensively conducted. In this study, ...
research
03/10/2023

Analyzing covariate clustering effects in healthcare cost subgroups: insights and applications for prediction

Healthcare cost prediction is a challenging task due to the high-dimensi...
research
02/22/2023

Doubly structured sparsity for grouped multivariate responses with application to functional outcome score modeling

This work is motivated by the need to accurately model a vector of respo...

Please sign up or login with your details

Forgot password? Click here to reset