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Conditions for Occam's razor applicability and noise elimination (CROSBI ID 463190)

Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija

Gamberger, Dragan ; Lavrač, Nada Conditions for Occam's razor applicability and noise elimination // Machine Learning: ECML-97 / van Someren, Maarten ; Widmer, Gerhard (ur.). Berlin: Springer, 1997. str. 108-123-x

Podaci o odgovornosti

Gamberger, Dragan ; Lavrač, Nada

engleski

Conditions for Occam's razor applicability and noise elimination

The Occam's razor principle suggests that among all the correct hypotheses, the simplest hypothesis is the one which best captures the structure of the problem domain and has the highest prediction accuracy when classifying new instances. This principle is implicitly used also for dealing with noise, in order to avoid overfitting a noisy training set by rule truncation or by pruning of decision trees. This work gives a theoretical framework for the applicability of Occam's razor, developed into a procedure for eliminating noise from a training set. The results of empirical evaluation show the usefulness of the presented approach to noise elimination.

machine learning; noise handling

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Podaci o prilogu

108-123-x.

1997.

objavljeno

Podaci o matičnoj publikaciji

van Someren, Maarten ; Widmer, Gerhard

Berlin: Springer

Podaci o skupu

9th European Conference on Machine Learning

predavanje

23.04.1997-25.04.1997

Prag, Češka Republika

Povezanost rada

Elektrotehnika