基于AdaBoost的改进模糊分类规则集成学习
Advance Ensemble Learning of Fuzzy Classification Rules Based on AdaBoost
-
摘要: 基于集成学习提出了一种新的模糊分类规则的产生算法。将分类规则的前件、后件模糊化,在自适应提升(Adaptive Boosting,AdaBoost)算法的迭代中,调整训练实例的分布,利用遗传算法产生模糊分类规则。并在规则学习的适应度函数中引入训练实例的分布,使得模糊分类规则在产生阶段就考虑相互之间的协作,产生具有互补性的分类规则集。从而改善了模糊分类规则的整体识别能力,提高了分类识别精度。Abstract: A new learning algorithm of fuzzy classification rules is presented based on ensemble learning algorithm. By tuning the distribution of training instances during each AdaBoost iterative training, the classification rules with fuzzy antecedent and consequent are produced with genetic algorithm. The distribution of training instances participate in computing of the fitness function and the collaboration of rules which are complementary is taken into account during rules producing, so that the classification error rate is reduced and performance of the classification based on the fuzzy rules is improved.
-
Cordon O, del Jesus M J. Genetic learning of fuzzy classification systems cooperating with fuzzy reasoning methods [J].International Journal of Intelligent Systems.1998, 13(10/11):1025-3.0.CO;2-N' target='_blank'>[2]Merz C J. Using correspondence analysis to combine classifiers[J]. Machine Learning, 1999 36(1/2): 33 - 58.[3]Freund Y, Schapire R E. Experiments with a new boosting algorithm[C]. Proc. of the Thirteenth International Conference on Machine Learning, Morgan Kaufmann, 1996: 148- 156.[4]Gonzalez A, Herrera F. Multi-stage genetic fuzzy systems based on the iterative rule learning approach[J].Mathware Soft Computing.1997, 4:233-[5]Schapire R E. Theoretical views of boosting[C]. In Proc. 4th European Conference on Computational Learning Theory, 1999:1-10.[6]Freund Y. Boosting a weak learning algorithm by majority[J].Information and Computation, 1995, 2(121): 256 - 285.[7]Ishibuchi H, Nozaki K, Yamamoto N, et al.. Selecting fuzzy if-then rules for classification problems using genetic algorithms[J].IEEE Trans. on Fuzzy Systems.1995, 3(2):260-
计量
- 文章访问数: 2200
- HTML全文浏览量: 102
- PDF下载量: 682
- 被引次数: 0