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Analysis and comparison of an improved unreconstructed variance criterion to other criteria for estimating the dimension of PCA model

机译:改进的未重构方差准则与其他准则的分析和比较,以估计PCA模型的维数

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This paper provides a new criterion to select the significant components of an empirical process model using the principal component analysis approach. The proposed criterion is an improved unreconstructed variance (IUV) applied to a changing of process data representation. Four other criteria are studied to perform fundamental analyses and comparisons to each other. They are well known in the literature as the minimum description length (MDL), the imbedded error (IE), the equality of the eigenvalue (EOE) and the variance of reconstruction error (VRE). The selection of the significant components is usually constrained by three main difficulties such as the noise included in data, the presence of independent and quasi independent process variables and the size of training samples. This paper presents two fundamental proofs that clarify the limitations of both criteria which are IE and VRE. The consistency of the MDL and EOE criteria improves by increasing the number of training observations. The purpose of the IUV criterion is to enhance the VRE in order to remedy the encountered limitations. The proposed criterion shows a promising consistency as well as a highly robustness versus the mentioned difficulties. Its potential and the limitations of the other criteria are illustrated using two numerical examples and the CSTR process. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文为使用主成分分析方法选择经验过程模型的重要成分提供了新的标准。提出的标准是一种改进的未重构方差(IUV),适用于过程数据表示的更改。研究了其他四个标准,以进行相互之间的基础分析和比较。在文献中,它们被称为最小描述长度(MDL),嵌入误差(IE),特征值相等(EOE)和重构误差方差(VRE)。重要组成部分的选择通常受到三个主要困难的约束,例如数据中包含的噪声,独立和准独立过程变量的存在以及训练样本的大小。本文提供了两个基本证明,以阐明IE和VRE这两个标准的局限性。 MDL和EOE标准的一致性通过增加训练观察数而得到改善。 IUV准则的目的是增强VRE,以弥补遇到的限制。所提出的标准显示出有希望的一致性以及相对于上述困难的高度鲁棒性。使用两个数值示例和CSTR过程说明了其潜力和其他标准的局限性。 (C)2016 Elsevier Ltd.保留所有权利。

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