Good-turing estimation for the frequentist n-tuple classifier


Autoria(s): Morciniec, Michal; Rohwer, Richard
Contribuinte(s)

Bisset, David

Data(s)

01/09/1995

Resumo

We present results concerning the application of the Good-Turing (GT) estimation method to the frequentist n-tuple system. We show that the Good-Turing method can, to a certain extent rectify the Zero Frequency Problem by providing, within a formal framework, improved estimates of small tallies. We also show that it leads to better tuple system performance than Maximum Likelihood estimation (MLE). However, preliminary experimental results suggest that replacing zero tallies with an arbitrary constant close to zero before MLE yields better performance than that of GT system.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/521/1/NCRG_95_019.pdf

Morciniec, Michal and Rohwer, Richard (1995). Good-turing estimation for the frequentist n-tuple classifier. IN: Weightless Neural Network Workshop'95, Computing with Logical Neurons. Bisset, David (ed.) Canterbury: University of Kent.

Publicador

University of Kent

Relação

http://eprints.aston.ac.uk/521/

Tipo

Book Section

NonPeerReviewed