Generalized Linear Model Regression under Distance-to-set Penalties
Xu, Jason, Chi, Eric, Lange, Kenneth
–Neural Information Processing Systems
Estimation in generalized linear models (GLM) is complicated by the presence of constraints. One can handle constraints by maximizing a penalized log-likelihood. Penalties such as the lasso are effective in high dimensions but often lead to severe shrinkage. This paper explores instead penalizing the squared distance to constraint sets. Distance penalties are more flexible than algebraic and regularization penalties, and avoid the drawback of shrinkage.
Neural Information Processing Systems
Feb-14-2020, 07:56:58 GMT
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