6533b853fe1ef96bd12ac97c

RESEARCH PRODUCT

Some Experiments in Supervised Pattern Recognition with Incomplete Training Samples

F.j. FerriT. NájeraRicardo Barandela

subject

Information extractionComputer sciencebusiness.industryAnomaly detectionPattern recognitionArtificial intelligencebusinessMachine learningcomputer.software_genreClassifier (UML)computerk-nearest neighbors algorithm

description

This paper presents some ideas about automatic procedures to implement a system with the capability of detecting patterns arising from classes not represented in the training sample. The procedure aims at incorporating automatically to the training sample the necessary information about the new class for correctly recognizing patterns from this class in future classification tasks. The Nearest Neighbor rule is employed as the central classifier and several techniques are added to cope with the peril of incorporating noisy data to the training sample. Experimental results with real data confirm the benefits of the proposed procedure.

https://doi.org/10.1007/3-540-70659-3_54