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Principle Component Analysis and Partial Least Squares: Two Dimension Reduction Techniques for Regression
153
Citations
2
References
2008
Year
Unknown Venue
Principle Component AnalysisEngineeringData ScienceHigh-dimensional MethodIndependent VariablesDimension ReductionPredictive AnalyticsDimension Reduction TechniquesMultidimensional AnalysisMultilinear Subspace LearningRegression AnalysisDimensionality ReductionPrincipal Component AnalysisMultivariate AnalysisStatisticsFunctional Data AnalysisPartial Least Squares
Dimension reduction is one of the major tasks for multivariate analysis, it is especially critical for multivariate regressions in many P&C insurance-related applications. In this paper, we'll present two methodologies, principle component analysis (PCA) and partial least squares (PLC), for dimension reduction in a case that the independent variables used in a regression are highly correlated. PCA, as a dimension reduction methodology, is applied without the consideration of the correlation between the dependent variable and the independent variables, while PLS is applied based on the correlation. Therefore, we call PCA as an unsupervised dimension reduction methodology, and call PLS as a supervised dimension reduction methodology. We'll describe the algorithms of PCA and PLS, and compare their performances in multivariate regressions using simulated data.
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