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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >TinyLVR: A utility for viewing single predictor multivariate models in terms of a two factor latent vector model
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TinyLVR: A utility for viewing single predictor multivariate models in terms of a two factor latent vector model

机译:TinyLVR:一种用于根据两因素潜在矢量模型查看单个预测变量多元模型的实用程序

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This paper describes an adaptation of Ergon's 2PLS approach (Compression into two-component PLS factorizations. J. Chemom. 2003; 17: 303-312.) to represent a single predictor regression model in terms of a two-factor latent vector model. The purpose of this reduction is to aid model interpretation and diagnostics. Non-orthogonal score vectors are produced from two orthonormal loading vectors: one identical to the first PLS loading vector, and a second built from the regression vector. Using an invertible matrix, the factorization can be alternatively represented by two orthogonal score vectors, one of which is proportional to centred predictions. An auxiliary set of loadings is also calculated, which captures a different model space, but is provided since its associated residuals have useful properties. Identities connecting the two model spaces are provided. The latent vector regression coefficients are not always least-squares estimates but can be represented as the solution to a two-term generalized ridge regression. Consequences of this are addressed. The utility of TinyLVR is demonstrated with example models built using stepwise variate selection and ridge regression.
机译:本文描述了Ergon的2PLS方法(压缩成两部分PLS因式分解。J。Chemom。2003; 17:303-312。)的一种变型,以根据两因素潜在矢量模型来表示单个预测变量回归模型。减少的目的是帮助模型解释和诊断。非正交得分向量是从两个正交加载向量生成的:一个与第一个PLS加载向量相同,另一个与回归向量建立。使用可逆矩阵,分解可以替代地由两个正交分数矢量表示,其中一个与中心预测成比例。还计算了辅助载荷集,该辅助载荷集捕获了不同的模型空间,但由于其关联的残差具有有用的属性,因此提供了辅助载荷集。提供了连接两个模型空间的标识。潜在矢量回归系数并不总是最小二乘估计,而是可以表示为两项广义岭回归的解。解决了其后果。 TinyLVR的实用性通过使用逐步变量选择和岭回归构建的示例模型得到了证明。

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