Publication | Closed Access
Multiclass linear dimension reduction by weighted pairwise Fisher criteria
456
Citations
10
References
2001
Year
Mathematical ProgrammingLinear Discriminant AnalysisWeighted VariantClassification MethodEngineeringHigh-dimensional MethodData ScienceDifferent Weighting FunctionPattern RecognitionComplexity ReductionMultilinear Subspace LearningDimensionality ReductionPrincipal Component AnalysisStatistics
We derive a class of computationally inexpensive linear dimension reduction criteria by introducing a weighted variant of the well-known K-class Fisher criterion associated with linear discriminant analysis (LDA). It can be seen that LDA weights contributions of individual class pairs according to the Euclidean distance of the respective class means. We generalize upon LDA by introducing a different weighting function.
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