A GENETIC PROGRAMMING-BASED LEARNING ALGORITHMS FOR PRUNING COST-SENSITIVE CLASSIFIERS
2012 ◽
Vol 11
(02)
◽
pp. 1250011
◽
Keyword(s):
In this paper, we introduce a new hybrid learning algorithm, called DTGP, to construct cost-sensitive classifiers. This algorithm uses a decision tree as its basic classifier and the constructed decision tree will be pruned by a genetic programming algorithm using a fitness function that is sensitive to misclassification costs. The proposed learning algorithm has been examined through six cost-sensitive problems. The experimental results show that the proposed learning algorithm outperforms in comparison to some other known learning algorithms like C4.5 or naïve Bayesian.
Keyword(s):
Keyword(s):
2012 ◽
Vol 7
(18)
◽
pp. 372-382
Keyword(s):
2007 ◽
pp. 1153-1161
Keyword(s):
2003 ◽
Vol 36
(5)
◽
pp. 1187-1202
◽
2017 ◽
Vol 25
◽
pp. 3684-3698
2010 ◽
Vol 23
(5)
◽
pp. 1833-1847
◽