Publication | Closed Access
A class of learning algorithms for principal component analysis and minor component analysis
72
Citations
15
References
2000
Year
EngineeringMachine LearningData ScienceData MiningPattern RecognitionKnowledge DiscoveryMinor Component AnalysisMultilinear Subspace LearningComputer ScienceIndependent Component AnalysisDimensionality ReductionLargest EigenvaluePrincipal Component AnalysisFunctional Data AnalysisSignal ProcessingNonlinear Dimensionality ReductionLow-rank Approximation
Principal component analysis (PCA) and minor component analysis (MCA) are a powerful methodology for a wide variety of applications such as pattern recognition and signal processing. In this paper, we first propose a differential equation for the generalized eigenvalue problem.We prove that the stable points of this differential equation are the eigenvectors corresponding to the largest eigenvalue. Based on this generalized differential equation, a class of PCA and MCA learning algorithms can be obtained. We demonstrate that many existing PCA and MCA learning algorithms are special cases of this class, and this class includes some new and simpler MCA learning algorithms. Our results show that all the learning algorithms of this class have the same order of convergence speed, and they are robust to implementation error.
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