Publication | Closed Access
A SELF-STABILIZING LEARNING RULE FOR MINOR COMPONENT ANALYSIS
67
Citations
15
References
2004
Year
Weight Vector LengthEngineeringMachine LearningPattern RecognitionComputational NeuroscienceNeuroinformaticsKnowledge DiscoveryNeuronal NetworkMinor Component AnalysisSocial SciencesMultilinear Subspace LearningNeuroscienceIndependent Component AnalysisBrain-like ComputingPrincipal Component AnalysisNovel Learning Rule
The paper reviews single-neuron learning rules for minor component analysis and suggests a novel minor component learning rule. In this rule, the weight vector length is self-stabilizing, i.e., moving towards unit length in each learning step. In simulations with low- and medium-dimensional data, the performance of the novel learning rule is compared with previously suggested rules.
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