A comparative study of optimization models in genetic programming-based rule extraction problems

被引:0
作者
Marconi de Arruda Pereira
Eduardo Gontijo Carrano
Clodoveu Augusto Davis Júnior
João Antônio de Vasconcelos
机构
[1] UFSJ/CAP,Department of Technologies of Civil Engineering, Computation and Humanities
[2] UFMG,Electrical Engineering Department (DEE/UFMG)
[3] UFMG,Computer Science Department (DCC/UFMG)
[4] UFMG,Evolutionary Computation Laboratory (LCE/UFMG), Electrical Engineering Department (DEE/UFMG)
来源
Soft Computing | 2019年 / 23卷
关键词
Classification rules; Genetic programming; Multi-objective optimization; Optimization model assessment;
D O I
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中图分类号
学科分类号
摘要
In this manuscript, we identify and evaluate some of the most used optimization models for rule extraction using genetic programming-based algorithms. Six different models, which combine the most common fitness functions, were tested. These functions employ well-known metrics such as support, confidence, sensitivity, specificity, and accuracy. The models were then applied in the assessment of the performance of a single algorithm in several real classification problems. Results were compared using two different criteria: accuracy and sensitivity/specificity. This comparison, which was supported by statistical analysis, pointed out that the use of the product of sensitivity and specificity provides a more realistic estimation of classifier performance. It was also shown that the accuracy metric can make the classifier biased, especially in unbalanced databases.
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页码:1179 / 1197
页数:18
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