Publication | Closed Access
On the Performance of Some Multinomial Classification Rules
39
Citations
19
References
1978
Year
Data ClassificationClassification MethodEngineeringAutomatic ClassificationData MiningPattern RecognitionMonte CarloNew Distance ProcedureStatistical FoundationKnowledge DiscoverySampling TechniqueSampling (Statistics)BiostatisticsStatistical InferenceMultinomial Classification RulesIntelligent ClassificationStatisticsClassification Procedures
Abstract This article presents and discusses a new multinomial classification procedure based on a discrete distributional distance. Its performance along with other commonly used classification procedures is assessed through Monte Carlo sampling experiments under different population structures. In addition to reporting results consistent with the work of Gilbert (1968) and Moore (1973), the article describes sampling experiments which show that the new distance procedure is generally superior, in terms of both the mean actual and mean apparent errors, to the usual full multinomial rule in situations of disproportionate sample sizes.
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