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Discriminate Attribute Finding in Classification Learning

, and . Proceedings of the Fifth Australian Joint Conference on Artificial Intelligence (AI'92), page 374-379. Singapore, World Scientific, (1992)

Abstract

This paper describes a method for extending domain models in classification learning by deriving new attributes from existing ones. The process starts by examining examples of different classes which have overlapping ranges in all of their numeric attribute values. Based on existing attributes, new attributes which enhance the distinguishability of a class are created. These additional attributes are then used in the subsequent classification learning process. The research revealed that this method can enable relationships between attributes to be incorporated in the classification procedures and, depending on the nature of data, significantly increase the coverage of class descriptions, improve the accuracy of classifying novel instances and reduce the number of clauses in class description when compared to classification learning alone. Evaluation with the data on iris flower classification showed that the classification accuracy is slightly improved and the number of clauses in the class description is significantly reduced.

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