Research Abstract
Classification problems associated with univariate Gompertz populations are studied. The robustness of the linear discriminant function, the normal classificatory rule, LDF when the underlying populations are Gompertz, is investigated. The errors of misclassification corresponding to LDF are compared with that due to the likelihood ratio LR rule for Gompertz populations. The asymptotic probability distributions for the actual error rates are derived, for large sample sizes. Theoretical and experimental comparisons are performed.
Research Department
Research Journal
Applied Mathematics and Computation
Research Member
Research Publisher
Elsevier Inc.
Research Rank
1
Research Vol
Vol. 163 - No. 5
Research Website
Publisher Elsevier Science Inc. New York, NY, USA
Research Year
2005
Research Pages
PP.423–442