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Variable selection in general multinomial logit models
Affiliation:1. Department of Statistics, Ludwig-Maximilians-University, 80539 München, Germany;2. Department of Medical Biometry, Ruprecht-Karls-University, 69120 Heidelberg, Germany;1. Global Immunization Division, Centers for Disease Control and Prevention, 1600 Clifton Road, MS-E05, Atlanta, GA 30329, USA;2. Immunization and Vaccines Development Programme, World Health Organization, Addis Ababa, Ethiopia;3. Immunization and Vaccines Development Programme, Regional Office for Africa, World Health Organization, Republic of Congo;4. General Policy, Planning and Finance Directorate, Federal Ministry of Health, Addis Ababa, Ethiopia;5. Operations Research Directorate, Regional Ministry of Health, Southern Nations, Nationalities and Peoples’ Region, Awasa, Ethiopia;1. Department of Neurobiology, Silberman Institute of Life Sciences, Hebrew University, Jerusalem, Israel;2. The Edmond and Lily Safra Center for Brain Sciences, Hebrew University, Jerusalem, Israel;1. Department of Mathematics, Tongji University, Shanghai, 200092, China;2. School of Business, Shanghai Dianji University, Shanghai, 201306, China
Abstract:The use of the multinomial logit model is typically restricted to applications with few predictors, because in high-dimensional settings maximum likelihood estimates tend to deteriorate. A sparsity-inducing penalty is proposed that accounts for the special structure of multinomial models by penalizing the parameters that are linked to one variable in a grouped way. It is devised to handle general multinomial logit models with a combination of global predictors and those that are specific to the response categories. A proximal gradient algorithm is used that efficiently computes stable estimates. Adaptive weights and a refitting procedure are incorporated to improve variable selection and predictive performance. The effectiveness of the proposed method is demonstrated by simulation studies and an application to the modeling of party choice of voters in Germany.
Keywords:Logistic regression  Multinomial logit model  Variable selection  Lasso  Group Lasso  CATS Lasso
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