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The Sparse Principal Component Analysis Problem: Optimality Conditions and Algorithms

机译:稀疏主成分分析问题:最优条件和算法

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摘要

Sparse principal component analysis addresses the problem of finding a linear combination of the variables in a given dataset with a sparse coefficients vector that maximizes the variability of the data. This model enhances the ability to interpret the principal components and is applicable in a wide variety of fields including genetics and finance, just to name a few. We suggest a necessary coordinate-wise-based optimality condition and show its superiority over the stationarity-based condition that is commonly used in the literature, which is the basis for many of the algorithms designed to solve the problem. We devise algorithms that are based on the new optimality condition and provide numerical experiments that support our assertion that algorithms, which are guaranteed to converge to stronger optimality conditions, perform better than algorithms that converge to points satisfying weaker optimality conditions.
机译:稀疏主成分分析解决了在给定数据集中找到变量的线性组合以及稀疏系数向量的问题,该稀疏系数向量使数据的可变性最大化。该模型增强了解释主要成分的能力,可应用于包括遗传学和金融学在内的众多领域,仅举几例。我们提出了一个必要的基于坐标的最优条件,并显示了其优于文献中常用的基于平稳性的条件,这是许多旨在解决该问题的算法的基础。我们设计了基于新的最优性条件的算法,并提供了数值实验来支持我们的断言,即可以保证收敛到更强的最优性条件的算法,其性能要优于收敛到满足较弱最优性条件的点的算法。

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