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Global sparse partial least squares

机译:全局稀疏偏最小二乘

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摘要

The partial least squares (PLS) is designed for prediction problems when the number of predictors is larger than the number of training samples. PLS is based on latent components that are linear combinations of all of the original predictors, it automatically employs all predictors regardless of their relevance. This will degrade its performance and make it difficult to interpret the result. In this paper, global sparse PLS (GSPLS) is proposed to allow common variable selection in each deflation process as well as dimension reduction. We introduce the ℓ norm to direction matrix and develop an algorithm for GSPLS via employing the Bregmen Iteration algorithm, illustrate the performance of proposed method with an analysis to red wine dataset. Numerical studies demonstrate the superiority of proposed GSPLS compared with standard PLS and other existing methods for variable selection and prediction in most of the cases.
机译:当预测变量的数量大于训练样本的数量时,偏最小二乘(PLS)用于预测问题。 PLS基于潜在成分,这些潜在成分是所有原始预测变量的线性组合,它会自动使用所有预测变量,而不考虑它们的相关性。这将降低其性能并使其难以解释结果。在本文中,提出了全局稀疏PLS(GSPLS),以允许在每个放气过程中选择公共变量以及减少维数。我们将ℓ范数引入方向矩阵,并通过使用Bregmen迭代算法开发GSPLS算法,并通过对红酒数据集的分析来说明所提出方法的性能。数值研究表明,在大多数情况下,建议的GSPLS与标准PLS和其他现有方法相比,在变量选择和预测方面具有优越性。

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