Association Structure Learning in Multivariate Categorical Response Regression

Adam Rothman Co-Author
University of Minnesota
 
Aaron Molstad Co-Author
University of Minnesota
 
Hongru Zhao First Author
 
Hongru Zhao Presenting Author
 
Sunday, Aug 3: 4:05 PM - 4:20 PM
1745 
Contributed Papers 
Music City Center 
Modeling the complex relationships between multiple categorical response variables as a function of predictors is a fundamental task in the analysis of categorical data. However, existing methods can be difficult to interpret and may lack flexibility. To address these challenges, we introduce a penalized likelihood method for multivariate categorical response regression that relies on a novel subspace decomposition to parameterize interpretable association structures. Our approach models the relationships between categorical responses by identifying mutual, joint, and conditionally independent associations, which yields a linear problem within a tensor product space. We establish theoretical guarantees for our estimator, including error bounds in high-dimensional settings, and demonstrate the method's interpretability and prediction accuracy through comprehensive simulation studies.

Keywords

multinomial logistic regression

categorical data analysis

log-linear models 

Main Sponsor

Section on Statistical Learning and Data Science