Regularized Discriminant Analysis

Jerome H. Friedman(SLAC National Accelerator Laboratory)
Journal of the American Statistical Association
March 1, 1989
Cited by 2,258Open Access
Full Text

Abstract

Abstract Linear and quadratic discriminant analysis are considered in the small-sample, high-dimensional setting. Alternatives to the usual maximum likelihood (plug-in) estimates for the covariance matrices are proposed. These alternatives are characterized by two parameters, the values of which are customized to individual situations by jointly minimizing a sample-based estimate of future misclassification risk. Computationally fast implementations are presented, and the efficacy of the approach is examined through simulation studies and application to data. These studies indicate that in many circumstances dramatic gains in classification accuracy can be achieved.


Related Papers

No related papers found

Powered by citation graph analysis