Publication details

Supervised nonparametric information theoretic classification

Authors

ARCHAMBEAU C BUTZ T POPOVICI Vlad VERLEYSEN M THIRAN JP

Year of publication 2004
Type Article in Periodical
Citation
Doi http://dx.doi.org/10.1109/ICPR.2004.1334554
Description In this paper supervised nonparametric information theoretic classification (ITC) is introduced. Its principle relies on the likelihood of a data sample of transmitting its class label to data points in its vicinity. ITCs learning rule is linked to the concept of information potential and the approach is validated on Ripley's data set. We show that ITC may outperform classical classification algorithms, such as probabilistic neural networks and support vector machines.

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