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Vol: 47(61) No: 2 / June 2002        

Mapping Quantitative Attributes for the Association Rule Problem
Luminita Dumitriu
Dept. of Computer Science and Engineering, "Dunarea de Jos" University, str. Domneasca nr. 111, 6200, Galati, Romania, phone: 40-723-161314, e-mail: Luminita.Dumitriu@ugal.ro


Keywords: data mining, association rules, data models.

Abstract
Mapping quantitative attributes has been solved in several ways, mainly grouping their values in ranges. In the absence of a priori knowledge, there is no criterion to evaluate the appropriateness of the mapping. We have devised an approach that allows the user to build partial data models, based on some of the attributes in the database. For the attributes with indecidable mapping we are offering the user a data analysis tool that measures association degrees between the values of a new attribute to an existing, partial data model. We have defined some measures of association that can quantify the appropriateness of some mapping to an existing data model. Using the resulting values, the user can easily select the set of attributes that lead to detecting the mapping.

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