DocumentCode
2340816
Title
Quasi-morphism and comprehensibility of rules in inductive learning
Author
Wettayaprasit, Wiphada ; Lursinsap, Chidchanok ; Chu, Cheehung Henry
Author_Institution
Center for Adv. Comput. Studies, Univ. of Louisiana at Lafayette, LA, USA
fYear
2002
fDate
2002
Firstpage
337
Lastpage
342
Abstract
We present a model of creating a hierarchical set of rules that encode generalizations and exceptions derived from induction learning. The rules use the input features directly and are therefore comprehensible to the users. Learning is performed by a feedforward neural network and the rules are extracted from the trained network. A pattern classification task is used to demonstrate the efficacy of our approach. We show that the rules have similar classification performance while being more comprehensible to the users.
Keywords
feedforward neural nets; generalisation (artificial intelligence); learning by example; pattern classification; exceptions; feedforward neural network; generalizations; inductive learning; input features; pattern classification; rule comprehensibility; rule quasi-morphism; trained network; Computer science; Decision trees; Feedforward neural networks; Kelvin; Learning systems; Mathematical model; Mathematics; Neural networks; Pattern classification; Temperature;
fLanguage
English
Publisher
ieee
Conference_Titel
Cognitive Informatics, 2002. Proceedings. First IEEE International Conference on
Print_ISBN
0-7695-1724-2
Type
conf
DOI
10.1109/COGINF.2002.1039315
Filename
1039315
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