确定多变量模型维数的不同方法

D. Rutledge, J. Roger, M. Lesnoff
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引用次数: 11

摘要

使用所有多变量分析方法的一个棘手方面是选择模型中使用的潜在变量的数量,无论是在探索性方法(如主成分分析(PCA))还是预测性方法(例如主成分回归(PCR)、偏最小二乘回归(PLS))的情况下。对于探索性方法,我们想知道哪些潜在变量值得选择进行解释,哪些只包含噪声。对于预测方法,我们希望确保我们包括预测的所有感兴趣的可变性,而不引入会导致除用于创建多变量模型的样本之外的样本的预测质量降低的可变性。
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Different Methods for Determining the Dimensionality of Multivariate Models
A tricky aspect in the use of all multivariate analysis methods is the choice of the number of Latent Variables to use in the model, whether in the case of exploratory methods such as Principal Components Analysis (PCA) or predictive methods such as Principal Components Regression (PCR), Partial Least Squares regression (PLS). For exploratory methods, we want to know which Latent Variables deserve to be selected for interpretation and which contain only noise. For predictive methods, we want to ensure that we include all the variability of interest for the prediction, without introducing variability that would lead to a reduction in the quality of the predictions for samples other than those used to create the multivariate model.
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