1998
DOI: 10.1002/(sici)1099-128x(199809/10)12:5<301::aid-cem515>3.0.co;2-s
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Analysis of multiblock and hierarchical PCA and PLS models

Abstract: Multiblock and hierarchical PCA and PLS methods have been proposed in the recent literature in order to improve the interpretability of multivariate models. They have been used in cases where the number of variables is large and additional information is available for blocking the variables into conceptually meaningful blocks. In this paper we compare these methods from a theoretical or algorithmic viewpoint using a common notation and illustrate their differences with several case studies. Undesirable propert… Show more

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Cited by 603 publications
(459 citation statements)
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“…To obtain a feeling for the correlation between the sensory measurements and the reduced set of rheological measurements, the sensory and rheological data sets were combined and a consensus principal component analysis (consensus PCA) [21] was performed, resulting in the loading plot shown in Figure 4. Creamy, airy and fatty mouthfeel are related and they clearly relate negatively to rheological variables describing break-up of the structure (ssr-fd , ssrtmax, dss-critstrainA); thus, when break-up of the structure is at low deformation, ratings for these three attributes are high.…”
Section: Rheological Resultsmentioning
confidence: 99%
“…To obtain a feeling for the correlation between the sensory measurements and the reduced set of rheological measurements, the sensory and rheological data sets were combined and a consensus principal component analysis (consensus PCA) [21] was performed, resulting in the loading plot shown in Figure 4. Creamy, airy and fatty mouthfeel are related and they clearly relate negatively to rheological variables describing break-up of the structure (ssr-fd , ssrtmax, dss-critstrainA); thus, when break-up of the structure is at low deformation, ratings for these three attributes are high.…”
Section: Rheological Resultsmentioning
confidence: 99%
“…Since the initial set of independent variables is usually quite large selected subjectively and a number of coefficients will most likely have been estimated by Ordinary Least Squares methods (Forward, Backward or Stepwise approaches provided by most standard statistical programs). Although partial least squares regression (PLS) and principal component regression (PCR) provide good results, the problems still cannot be solved efficiently (Johan et al, 1998). More recently, several modified PCR and PLS methods have been proposed, for example a hierarchical PCA (HPCA), a consensus PCA (CPCA,a hierarchical PLS (HPLS) and a multi-block PLS (MBPLS) (Svante et al,1996).These methods divide the set of independent variables into multiple blocks according their physical context and try to explain the dependent variables from different dimensions, in order to solve regression by multi-block independent variables.…”
Section: Previous Researchmentioning
confidence: 99%
“…Hence it may be advantageous if the latent variables are first extracted from the spectra, and then are augmented with the temperature variable which serves as another predictor variable. The idea is analogous to that of the multi-block PLS algorithm [26], where separate block models are built for the spectral and process data (e.g. temperature and pressure), and then these multiple models are combined.…”
Section: Global Modelling Approachmentioning
confidence: 99%