Title :
Fast imbalanced classification of healthcare data with missing values
Author :
Talayeh Razzaghi;Oleg Roderick;Ilya Safro;Nick Marko
Author_Institution :
School of Computing, Clemson Univeristy, Clemson, SC 29634
fDate :
7/1/2015 12:00:00 AM
Abstract :
In medical domain, data features often contain missing values. This can create serious bias in the predictive modeling. Typical standard data mining methods often produce poor performance measures. In this paper, we propose a new method to simultaneously classify large datasets and reduce the effects of missing values. The proposed method is based on a multilevel framework of the cost-sensitive SVM and the expected maximization imputation method for missing values, which relies on iterated regression analyses. We compare classification results of multilevel SVM-based algorithms on public benchmark datasets with imbalanced classes and missing values as well as real data in health applications, and show that our multilevel SVM-based method produces fast, and more accurate and robust classification results.
Keywords :
"Support vector machines","Medical services","Predictive models","Standards","Training","Mathematical model","Prediction algorithms"
Conference_Titel :
Information Fusion (Fusion), 2015 18th International Conference on