Variable Selection in General Multinomial Logit Models

Variable Selection in General Multinomial Logit Models

Released Thursday, 21st June 2012
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Variable Selection in General Multinomial Logit Models

Variable Selection in General Multinomial Logit Models

Variable Selection in General Multinomial Logit Models

Variable Selection in General Multinomial Logit Models

Thursday, 21st June 2012
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The use of the multinomial logit model is typically restricted to applications with few predictors, because inhigh-dimensional settings maximum likelihood estimates tend to deteriorate. In this paper we are proposing a sparsity-inducing penalty that accounts for the special structure of multinomial models. In contrast to existing methods, it penalizes the parameters that are linked to one variablein a grouped way and thus yields variable selection instead of parameter selection. We develop a proximal gradient method that is able to efficiently compute stable estimates.In addition, the penalization is extended to the important case of predictors that vary across response categories. We apply our estimator to the modeling of party choice of voters in Germany including voter-specific variables like age and gender but also party-specific features like stance on nuclear energy and immigration.

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