Publisert 2004

Les på engelsk

Publikasjonsdetaljer

Tidsskrift : Journal of Chemometrics , vol. 18 , p. 103–111–9 , 2004

Internasjonale standardnummer :
Trykt : 0886-9383
Elektronisk : 1099-128X

Publikasjonstype : Vitenskapelig artikkel

Bidragsytere : Berget, Ingunn; Næs, Tormod

Sak : 2

Har du spørsmål om noe vedrørende publikasjonen, kan du kontakte Nofimas bibliotekleder.

Kjetil Aune
Bibliotekleder
kjetil.aune@nofima.no

Sammendrag

Methodologies for updating a classifier using unclassified observations are discussed. The focus is on classifiers based on linear or quadratic discriminant analysis. A semi-supervised clustering based on the Gustafson-Kessel algorithm for fuzzy clustering is carried out for all data, both classified and unclassified observations. The resulting fuzzy means and covariance matrices are used to update the classifier. It has formerly been shown that this methodology can reduce the misclassification rate. In this paper a modified approach is suggested for situations with errors in the data for the unclassified objects. To handle such situations, a noise cluster is introduced in the cluster analysis, and dubious points are allocated to this cluster. The proposed modifications are tested on simulated data. The results indicate that the misclassification rates are lower than or at the same level as with the original updating procedure. Copyright (C) 2004 John Wiley Sons, Ltd.

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