多项式logistic回归
特征选择
极小极大
多项式分布
数学
模式识别(心理学)
逻辑回归
分类器(UML)
Lasso(编程语言)
多类分类
人工智能
数学优化
计算机科学
机器学习
算法
统计
支持向量机
万维网
作者
Felix Abramovich,Vadim Grinshtein,Tomer Levy
标识
DOI:10.1109/tit.2021.3075137
摘要
In this paper we consider high-dimensional multiclass classification by sparse multinomial logistic regression. We propose first a feature selection procedure based on penalized maximum likelihood with a complexity penalty on the model size and derive the nonasymptotic bounds for misclassification excess risk of the resulting classifier. We establish also their tightness by deriving the corresponding minimax lower bounds. In particular, we show that there is a phase transition between small and large number of classes. The bounds can be reduced under the additional low noise condition. To find a penalized maximum likelihood solution with a complexity penalty requires, however, a combinatorial search over all possible models. To design a feature selection procedure computationally feasible for high-dimensional data, we propose multinomial logistic group Lasso and Slope classifiers and show that they also achieve the minimax order.
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