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AI
1999
Springer

Learning by Discovering Concept Hierarchies

13 years 11 months ago
Learning by Discovering Concept Hierarchies
We present a new machine learning method that, given a set of training examples, induces a definition of the target concept in terms of a hierarchy of intermediate concepts and their definitions. This effectively decomposes the problem into smaller, less complex problems. The method is inspired by the Boolean function decomposition approach to the design of switching circuits. To cope with high time complexity of finding an optimal decomposition, we propose a suboptimal heuristic algorithm. The method, implemented in program HINT (Hierarchy INduction Tool), is experimentally evaluated using a set of artificial and real-world learning problems. In particular, the evaluation addresses the generalization property of decomposition and its capability to discover meaningful hierarchies. The experiments show that HINT performs well in both respects. Keywords Function decomposition, Machine learning, Concept hierarchies, Concept discovery, Constructive induction, Generalization 1
Blaz Zupan, Marko Bohanec, Janez Demsar, Ivan Brat
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 1999
Where AI
Authors Blaz Zupan, Marko Bohanec, Janez Demsar, Ivan Bratko
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