Title
Embedding Undersampling Rotation Forest for Imbalanced Problem.
Abstract
Rotation Forest is an ensemble learning approach achieving better performance comparing to Bagging and Boosting through building accurate and diverse classifiers using rotated feature space. However, like other conventional classifiers, Rotation Forest does not work well on the imbalanced data which are characterized as having much less examples of one class (minority class) than the other (majority class), and the cost of misclassifying minority class examples is often much more expensive than the contrary cases. This paper proposes a novel method called Embedding Undersampling Rotation Forest (EURF) to handle this problem (1) sampling subsets from the majority class and learning a projection matrix from each subset and (2) obtaining training sets by projecting re-undersampling subsets of the original data set to new spaces defined by the matrices and constructing an individual classifier from each training set. For the first method, undersampling is to force the rotation matrix to better capture the features of the minority class without harming the diversity between individual classifiers. With respect to the second method, the undersampling technique aims to improve the performance of individual classifiers on the minority class. The experimental results show that EURF achieves significantly better performance comparing to other state-of-the-art methods.
Year
DOI
Venue
2018
10.1155/2018/6798042
COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE
Field
DocType
Volume
Feature vector,Rotation matrix,Embedding,Pattern recognition,Matrix (mathematics),Computer science,Undersampling,Boosting (machine learning),Artificial intelligence,Classifier (linguistics),Ensemble learning,Machine learning
Journal
2018
ISSN
Citations 
PageRank 
1687-5265
0
0.34
References 
Authors
17
3
Name
Order
Citations
PageRank
Huaping Guo1193.05
Xiaoyu Diao200.68
Hongbing Liu3598.74