Paper:
A Probabilistic WKL Rule for Incremental Feature Learning and Pattern Recognition
Jasmin Léveillé*, Isao Hayashi**, and Kunihiko Fukushima**,***
*Center of Excellence for Learning in Education, Science and Technology, Boston University, 677 Beacon Street, Boston, Massachusetts 02215, USA
**Faculty of Informatics, Kansai University, 2-1-1 Ryozenji-cho, Takatsuki, Osaka 569-1095, Japan
***Fuzzy Logic Systems Institute, 680-41 Kawazu, Iizuka, Fukuoka 820-0067, Japan
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