Title :
An Improved Ensemble Learning Method for Classifying High-Dimensional and Imbalanced Biomedicine Data
Author :
Hualong Yu ; Jun Ni
Author_Institution :
Sch. of Comput. Sci. & Eng., Jiangsu Univ. of Sci. & Technol., Zhenjiang, China
Abstract :
Training classifiers on skewed data can be technically challenging tasks, especially if the data is high-dimensional simultaneously, the tasks can become more difficult. In biomedicine field, skewed data type often appears. In this study, we try to deal with this problem by combining asymmetric bagging ensemble classifier (asBagging) that has been presented in previous work and an improved random subspace (RS) generation strategy that is called feature subspace (FSS). Specifically, FSS is a novel method to promote the balance level between accuracy and diversity of base classifiers in asBagging. In view of the strong generalization capability of support vector machine (SVM), we adopt it to be base classifier. Extensive experiments on four benchmark biomedicine data sets indicate that the proposed ensemble learning method outperforms many baseline approaches in terms of Accuracy, F-measure, G-mean and AUC evaluation criterions, thus it can be regarded as an effective and efficient tool to deal with high-dimensional and imbalanced biomedical data.
Keywords :
medical computing; pattern classification; random processes; support vector machines; AUC evaluation criterions; F-measure; G-mean; SVM; asBagging; asymmetric bagging ensemble classifier; benchmark biomedicine data sets; feature subspace; generalization capability; high-dimensional classification; imbalanced biomedicine data classification; improved ensemble learning method; random subspace generation; skewed data; support vector machine; training classifiers; Bioinformatics; Cancer; Feature extraction; Frequency selective surfaces; Support vector machines; Training; Bioinformatics; class imbalance; ensemble learning; high-dimensional biomedicine data;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2306838