<journal article>
SELECTION OF DECISION BOUNDARIES FOR LOGISTIC REGRESSION

Creator
Language
Publisher
Date
Source Title
Vol
First Page
Last Page
Publication Type
Access Rights
Crossref DOI
Abstract We propose a method that selects decision boundaries for the logistic regression model by applying sparse regularization. We can investigate which decision boundaries are truly necessary for the multi...nomial logistic regression model by letting some of the coefficient parameters or the differences between them approach zero. The model is estimated by the maximum penalized likelihood method with a fused lasso-type penalty. We also introduce various model selection criteria for evaluating models estimated by the penalized likelihood method. Simulation studies are conducted in order to evaluate the effectiveness of the proposed method. Real data analysis provides new insights into how each of the predictors contributes to the classification.show more

Hide fulltext details.

pdf 7-Matsui pdf 305 KB 459  

Details

PISSN
EISSN
NCID
Record ID
Peer-Reviewed
Subject Terms
Funding Information
Created Date 2018.03.02
Modified Date 2023.11.21

People who viewed this item also viewed