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Cross-validation of component models: A critical look at current methods

机译:组件模型的交叉验证:当前方法的批判性观察

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摘要

In regression, cross-validation is an effective and popular approach that is used to decide, for example, the number of underlying features, and to estimate the average prediction error. The basic principle of cross-validation is to leave out part of the data, build a model, and then predict the left-out samples. While such an approach can also be envisioned for component models such as principal component analysis (PCA), most current implementations do not comply with the essential requirement that the predictions should be independent of the entity being predicted. Further, these methods have not been properly reviewed in the literature. In this paper, we review the most commonly used generic PCA cross-validation schemes and assess how well they work in various scenarios.
机译:在回归中,交叉验证是一种有效且流行的方法,用于确定(例如)基础特征的数量并估计平均预测误差。交叉验证的基本原理是遗漏部分数据,建立模型,然后预测遗留的样本。尽管也可以为诸如主成分分析(PCA)之类的组件模型设想这种方法,但是大多数当前的实现都不符合基本要求,即预测应该独立于所预测的实体。此外,这些方法尚未在文献中得到适当的审查。在本文中,我们回顾了最常用的通用PCA交叉验证方案,并评估了它们在各种情况下的效果。

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