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SCCC
2000
IEEE

A Genetic Classifier Tool

13 years 8 months ago
A Genetic Classifier Tool
Knowledge discovery is the most desirable end product of an enterprise information system. Researches from different areas recognize that a new generation of intelligent tools for automated data mining is needed to deal with large databases. In this sense, induction based learning systems have emerged as a promising approach. This paper describes an induction-based classifier tool. The tool employs a genetic algorithm using the Michigan approach to find rules, is able to process discrete and continuous attributes and also is domain-independent. Implementation details will be explained, including some optimizations, data structures and genetic operators. Some optimizations include the use of phenotypic sharing (with linear complexity) to direct the search. The results of accuracy are compared with other 33 algorithms in 32 datasets. The difference of accuracy is not statistically significant at the 10% level when compared with the best of the other 33 algorithms.
Aurora T. R. Pozo, Mozart Hasse
Added 01 Aug 2010
Updated 01 Aug 2010
Type Conference
Year 2000
Where SCCC
Authors Aurora T. R. Pozo, Mozart Hasse
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