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Feature subset selection for the multinomial logit model via mixed-integer optimization

机译:通过混合整数优化选择多项式logit模型的特征子集

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This paper is concerned with a feature subset selection problem for the multinomial logit (MNL) model. There are several convex approximation algorithms for this problem, but to date the only exact algorithms are those for the binomial logit model. In this paper, we propose an exact algorithm to solve the problem for the MNL model. Our algorithm is based on a mixed-integer optimization approach with an outer approximation method. We prove the convergence properties of the algorithm for more general models including generalized linear models for multiclass classification. We also propose approximation of loss functions to accelerate the algorithm computationally. Numerical experiments demonstrate that our exact and approximation algorithms achieve better generalization performance than does an L1-regularization method.
机译:本文涉及多项式Lo​​git(MNL)模型的特征子集选择问题。对于此问题,有几种凸近似算法,但迄今为止,唯一的精确算法是用于二项式logit模型的算法。在本文中,我们提出了一种精确的算法来解决MNL模型的问题。我们的算法基于带有外部近似方法的混合整数优化方法。我们证明了该算法对于更通用的模型(包括用于多类分类的广义线性模型)的收敛性。我们还提出了损失函数的近似值,以加快算法的计算速度。数值实验表明,我们的精确算法和逼近算法比L1正则化方法具有更好的泛化性能。

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