Publication | Closed Access
Algorithms for multi‐group PLS
15
Citations
13
References
2014
Year
Multi‐group PlsPls RegressionEngineeringData ScienceAlgorithm DesignMultidimensional AnalysisEducationMaximization CriterionRegression AnalysisComputer ScienceDiscrete MathematicsPrincipal Component AnalysisGroup StructureMultivariate AnalysisStatisticsStructural Equation ModelingLatent Variable MethodsPartial Least Squares
Several approaches of investigation of the relationships between two datasets where the individuals are structured into groups are discussed. These strategies fit within the framework of partial least squares (PLS) regression. Each strategy of analysis is introduced on the basis of a maximization criterion, which involves the covariances between components associated with the groups of individuals in each dataset. Thereafter, algorithms are proposed to solve these maximization problems. The strategies of analysis can be considered as extensions of multi‐group principal components analysis to the context of PLS regression. Copyright © 2014 John Wiley & Sons, Ltd.
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