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Sparse partial least squares regression for simultaneous dimension reduction and variable selection

机译:稀疏的偏最小二乘回归可同时减少维数和选择变量

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摘要

Partial least squares regression has been an alternative to ordinary least squares for handling multicollinearity in several areas of scientific research since the 1960s. It has recently gained much attention in the analysis of high dimensional genomic data. We show that known asymptotic consistency of the partial least squares estimator for a univariate response does not hold with the very large p and small n paradigm. We derive a similar result for a multivariate response regression with partial least squares. We then propose a sparse partial least squares formulation which aims simultaneously to achieve good predictive performance and variable selection by producing sparse linear combinations of the original predictors. We provide an efficient implementation of sparse partial least squares regression and compare it with well-known variable selection and dimension reduction approaches via simulation experiments. We illustrate the practical utility of sparse partial least squares regression in a joint analysis of gene expression and genomewide binding data.
机译:自1960年代以来,在科学研究的多个领域,偏最小二乘回归一直是普通最小二乘的替代方法,用于处理多重共线性。最近,它在高维基因组数据分析中引起了很多关注。我们表明,对于单变量响应,偏最小二乘估计的渐近一致性并不适用于非常大的p和小的n范式。对于偏最小二乘的多元响应回归,我们得出了相似的结果。然后,我们提出了一种稀疏的局部最小二乘公式,旨在通过产生原始预测变量的稀疏线性组合,同时实现良好的预测性能和变量选择。我们提供了稀疏偏最小二乘回归的有效实现,并通过模拟实验将其与众所周知的变量选择和降维方法进行了比较。我们在基因表达和全基因组结合数据的联合分析中说明了稀疏偏最小二乘回归的实际应用。

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