Publication | Closed Access
Canonical partial least squares—a unified PLS approach to classification and regression problems
104
Citations
13
References
2009
Year
Support Vector MachineLatent ModelingEngineeringMachine LearningData ScienceHigh-dimensional MethodPattern RecognitionPredictive AnalyticsOptimal Latent VariablesLatent Variable ModelRegression ProblemsDimensionality ReductionLatent VariablesStatistical Learning TheoryPls MethodologyStatisticsKernel MethodLatent Variable Methods
Abstract We propose a new data compression method for estimating optimal latent variables in multi‐variate classification and regression problems where more than one response variable is available. The latent variables are found according to a common innovative principle combining PLS methodology and canonical correlation analysis (CCA). The suggested method is able to extract predictive information for the latent variables more effectively than ordinary PLS approaches. Only simple modifications of existing PLS and PPLS algorithms are required to adopt the proposed method. Copyright © 2009 John Wiley & Sons, Ltd.
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