Title :
An Empirical Study of Learning from Imbalanced Data Using Random Forest
Author :
Khoshgoftaar, Taghi M. ; Golawala, Moiz ; Hulse, Jason Van
Author_Institution :
Florida Atlantic Univ., Boca Raton
Abstract :
This paper discusses a comprehensive suite of experiments that analyze the performance of the random forest (RF) learner implemented in Weka. RF is a relatively new learner, and to the best of our knowledge, only preliminary experimentation on the construction of random forest classifiers in the context of imbalanced data has been reported in previous work. Therefore, the contribution of this study is to provide an extensive empirical evaluation of RF learners built from imbalanced data. What should be the recommended default number of trees in the ensemble? What should the recommended value be for the number of attributes? How does the RF learner perform on imbalanced data when compared with other commonly-used learners? We address these and other related issues in this work.
Keywords :
learning (artificial intelligence); pattern classification; Weka; imbalanced data; learning; random forest classifiers; random forest learner; Analysis of variance; Artificial intelligence; Bagging; Classification tree analysis; Data mining; Decision trees; Machine learning; Noise robustness; Radio frequency; Testing;
Conference_Titel :
Tools with Artificial Intelligence, 2007. ICTAI 2007. 19th IEEE International Conference on
Conference_Location :
Patras
Print_ISBN :
978-0-7695-3015-4
DOI :
10.1109/ICTAI.2007.46