- Balkan Journal of Electrical and Computer Engineering
- Volume:7 Issue:2
- A Meta-Ensemble Classifier Approach: Random Rotation Forest
A Meta-Ensemble Classifier Approach: Random Rotation Forest
Authors : Erdal TAŞCI
Pages : 182-187
Doi:10.17694/bajece.502156
View : 13 | Download : 6
Publication Date : 2019-04-30
Article Type : Research Paper
Abstract :Ensemble learning is a popular and intensively studied field in machine learning and pattern recognition to increase the performance of the classification. Random forest is so important for giving fast and effective results. On the other hand, Rotation Forest can get better performance than Random Forest. In this study, we present a meta-ensemble classifier, called Random Rotation Forest to utilize and combine the advantages of two classifiers insert ignore into journalissuearticles values(e.g. Rotation Forest and Random Forest);. In the experimental studies, we use three base learners insert ignore into journalissuearticles values(namely, J48, REPTree, and Random Forest); and two meta-learners insert ignore into journalissuearticles values(namely, Bagging and Rotation Forest); for ensemble classification on five datasets in UCI Machine Learning Repository. The experimental results indicate that Random Rotation Forest gives promising results according to base learners and bagging ensemble approaches in terms of accuracy rates, AUC, precision and recall values. Our method can be used for image/pattern recognition and machine learning problems.Keywords : Ensemble learning, Machine learning, Pattern recognition, Data mining, Classification, Rotation forest