Title of article
Exploring a physico-chemical multi-array explanatory model with a new multiple covariance-based technique: Structural equation exploratory regression Original Research Article
Author/Authors
X. Bry، نويسنده , , T. Verron، نويسنده , , P. Cazes، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
14
From page
45
To page
58
Abstract
In this work, we consider chemical and physical variable groups describing a common set of observations (cigarettes). One of the groups, minor smoke compounds (minSC), is assumed to depend on the others (minSC predictors). PLS regression (PLSR) of m inSC on the set of all predictors appears not to lead to a satisfactory analytic model, because it does not take into account the expert’s knowledge. PLS path modeling (PLSPM) does not use the multidimensional structure of predictor groups. Indeed, the expert needs to separate the influence of several pre-designed predictor groups on minSC, in order to see what dimensions this influence involves. To meet these needs, we consider a multi-group component-regression model, and propose a method to extract from each group several strong uncorrelated components that fit the model. Estimation is based on a global multiple covariance criterion, used in combination with an appropriate nesting approach. Compared to PLSR and PLSPM, the structural equation exploratory regression (SEER) we propose fully uses predictor group complementarity, both conceptually and statistically, to predict the dependent group.
Keywords
Batch processes , On-line monitoring , Principal component analysis , Unfolding , Multi-phase
Journal title
Analytica Chimica Acta
Serial Year
2009
Journal title
Analytica Chimica Acta
Record number
1037294
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