Title :
A robust data scaling algorithm for gene expression classification
Author :
Xi Hang Cao;Zoran Obradovic
Author_Institution :
Center for Data Analytics and Biomedical Informatics, Department of Computer and Information Sciences, College of Science and Technology, Temple University, 1925 N. 12th Street, Philadelphia, PA, U.S.A
Abstract :
Gene expression data are widely used in classification tasks for medical diagnosis. Data scaling is recommended and helpful for learning the classification models. In this study, we propose a data scaling algorithm to transform the data uniformly to an appropriate interval by learning a generalized logistic function to fit the empirical cumulative density function of the data. The proposed algorithm is robust to outliers, and experimental results show that models learned using data scaled by the proposed algorithm generally outperform the ones using min-max mapping and z-score which are currently the most commonly used data scaling algorithms.
Keywords :
"Logistics","Data models","Approximation algorithms","Robustness","Density functional theory","Approximation methods","Random variables"
Conference_Titel :
Bioinformatics and Bioengineering (BIBE), 2015 IEEE 15th International Conference on
DOI :
10.1109/BIBE.2015.7367734