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ICML
1996
IEEE

Learning Relational Concepts with Decision Trees

14 years 5 months ago
Learning Relational Concepts with Decision Trees
In this paper, we describe two di erent learning tasks for relational structures. When learning a classi er for structures, the relational structures in the training sets are classi ed as a whole. Contrarily, when learning a context dependent classi er for elementary objects, the elementary objects of the relational structures in the training set are classi ed. In general, the class of an elementary object will not only depend on its elementary properties, but also on its context, which has to be learned, too. We investigate the question how such classi cations can be induced automatically from a given training set containing classi ed structures or classi ed elementary objects respectively. We present a graph theoretic algorithm that allows the description of the objects in the training set by automatically constructed attributes. This allows us to employ well-known methods of decision tree inductiontoconstruct a hypothesis. We present the system INDIGO and compare it with the LINUS-...
Peter Geibel, Fritz Wysotzki
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 1996
Where ICML
Authors Peter Geibel, Fritz Wysotzki
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