A Likelihood-Based Approach for Multivariate Categorical Response Regression in High Dimensions

Volume: 118, Issue: 542, Pages: 1402 - 1414
Published: Dec 21, 2021
Abstract
We propose a penalized likelihood method to fit the bivariate categorical response regression model. Our method allows practitioners to estimate which predictors are irrelevant, which predictors only affect the marginal distributions of the bivariate response, and which predictors affect both the marginal distributions and log odds ratios. To compute our estimator, we propose an efficient first order algorithm which we extend to settings where...
Paper Details
Title
A Likelihood-Based Approach for Multivariate Categorical Response Regression in High Dimensions
Published Date
Dec 21, 2021
Volume
118
Issue
542
Pages
1402 - 1414
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