会议专题

The Research of ELM Ensemble Learning on Multi-class Resampling Imbalanced Data

  The ELM has been proved to have good generalization performance and fast training speed in both theory and application.However,it tends to majority class and neglects minority class when dealing with imbalanced data.The Ensemble learning of data resampling can improve the ELM classification accuracy of a few classes.We propose a class resampling technique and advance an ELM ensemble learning method which can make use of the information of few class samples.Experimental results show that the proposed method is better than the single ELM learning model.Because resampling is one of the most core technologies of large data processing,the method provides the help for the establishment of the learning model of the imbalanced data.

ELM classification accuracy resampling technique

Xiaolan Wang Sheng Xing

Department of Information Engineering Cangzhou Technical College Cangzhou, China College of Management, Department of Computer Hebei University, Cangzhou Normal University Baoding,

国际会议

2015 IEEE Advanced Information Technology, Electronic and Automation Control Conference(IAEAC 2015)(2015 IEEE先进信息技术,电子与自动化控制国际会议)

重庆

英文

455-459

2015-12-19(万方平台首次上网日期,不代表论文的发表时间)