DocumentCode :
1691756
Title :
An experiment in machine learning of redundant knowledge
Author :
Kononenko, Igor
Author_Institution :
Fac. of Electr. & Comput. Eng., Ljubljana Univ., Yugoslavia
fYear :
1991
Firstpage :
1146
Abstract :
Experiments in generating redundant diagnostic rules from examples in three medical domains are described. The idea is to generate a number of sets of decision rules (theories) using known inductive learning techniques. Each set is applied when classifying new objects. An object is classified to the class that is preferred by the majority of theories. The redundant knowledge with voting principle significantly outperformed the one theory principle. In addition, redundant knowledge generated in this way provides the possibility of better explanations, which is one of weak points of the inductively generated (nonredundant) sets of decision rules
Keywords :
decision theory; knowledge based systems; learning systems; medical diagnostic computing; decision rules; decision theories; inductive learning techniques; machine learning; medical diagnosis; objects classification; redundant diagnostic rules; redundant knowledge; voting principle; Artificial intelligence; Biomedical engineering; Decision trees; Expert systems; Knowledge acquisition; Machine learning; Medical diagnostic imaging; Pattern recognition; Standards development; Voting;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrotechnical Conference, 1991. Proceedings., 6th Mediterranean
Conference_Location :
LJubljana
Print_ISBN :
0-87942-655-1
Type :
conf
DOI :
10.1109/MELCON.1991.162044
Filename :
162044
Link To Document :
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