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MULTICLASS SPARSE DISCRIMINANT ANALYSIS

机译:多标菌稀疏判别分析

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摘要

In recent years several sparse linear discriminant analysis methods have been proposed for high-dimensional classification and variable selection. Most of these proposals focus on binary classification and are not directly applicable to multiclass classification problems. Some sparse discriminant analysis methods can handle multiclass classification problems, but their theoretical justifications remain unknown. In this paper, we propose a new multiclass sparse discriminant analysis method that estimates all discriminant directions simultaneously. We show that when applied to the binary case our proposal yields a classification direction that is equivalent to those attained by two successful binary sparse linear discriminant analysis methods, providing a unification of these seemingly unrelated proposals. Our method can be solved by an efficient algorithm that is implemented in an open R package msda available from CRAN. We offer theoretical justification of our method by establishing a variable selection consistency result and finding rates of convergence under the ultrahigh dimensionality setting. We further demonstrate the empirical performance of our method with simulations and data.
机译:近年来,已经提出了几种稀疏的线性判别分析方法,用于高维分类和可变选择。这些提案中的大多数都关注二进制分类,并且不可直接适用于多款分类问题。一些稀疏的判别分析方法可以处理多款分类问题,但它们的理论理由仍然是未知的。在本文中,我们提出了一种新的多种多联稀疏判别分析方法,即同时估计所有判别方向。我们表明,当应用于二进制案例时,我们的提案产生了一种分类方向,该分类方向相当于两个成功的二进制稀疏线性判别分析方法所获得的那些,提供了这些看似无关的提案的统一。我们的方法可以通过高效的算法来解决,该算法在开放的R包MSDA中实现,可从CRAN获得。我们通过建立可变选择一致性结果并在超高维度设置下找到收敛率来提供我们的方法的理论典范。我们进一步展示了我们使用模拟和数据的方法的实证性能。

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