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Model and estimators for partial least squares regression

机译:部分最小二乘回归的模型和估算

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摘要

Partial least squares (PLS) regression has been a very popular method for prediction. The method can in a natural way be connected to a statistical model, which now has been extended and further developed in terms of an envelope model. Concentrating on the univariate case, several estimators of the regression vector in this model are defined, including the ordinary PLS estimator, the maximum likelihood envelope estimator, and a recently proposed Bayes PLS estimator. These are compared with respect to prediction error by systematic simulations. The simulations indicate that Bayes PLS performs well compared with the other methods.
机译:偏最小二乘(PLS)回归是一种非常流行的预测方法。 该方法可以以自然的方式连接到统计模型,现在已经延伸并进一步发展并进一步开发。 专注于单变量的情况,定义了该模型中的回归载体的几个估计器,包括普通的PLS估计器,最大似然包络估计器和最近提出的贝叶斯PLS估计器。 这些通过系统模拟相对于预测误差进行比较。 模拟表明,与其他方法相比,贝叶斯PLS执行良好。

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