TY - GEN
T1 - Ensemble online sequential extreme learning machine for large data set classification
AU - ZHAI, Junhai
AU - WANG, Jinggeng
AU - WANG, Xizhao
PY - 2014/1
Y1 - 2014/1
N2 - Online sequential extreme learning machine (OSELM) proposed by Liang et al. employ sequential learning strategy to learn the target concept from the data. Compared with the original ELM, OS-ELM can learn data one-by-one or chunk-by-chunk with fixed or varying chunk size with almost same performance as ELM. While compared with other state-ofthe- art sequential algorithms such as SGBP, RAN and GAP-RBF, OS-ELM has faster learning speed and better generalization ability. However, similar to ELM, OS-ELM also has instability in different trials of simulations. In addition, for large data sets, OS-ELM will not halt when there are training samples not be learned, this phenomenon results in long learning time. In order to deal with the problems, this paper proposes an algorithm named E-OS-ELM for integrating OS-ELM to classify large data sets. The experimental results show that the proposed method is effective and efficient; it can effectively overcome the drawbacks mentioned above.
AB - Online sequential extreme learning machine (OSELM) proposed by Liang et al. employ sequential learning strategy to learn the target concept from the data. Compared with the original ELM, OS-ELM can learn data one-by-one or chunk-by-chunk with fixed or varying chunk size with almost same performance as ELM. While compared with other state-ofthe- art sequential algorithms such as SGBP, RAN and GAP-RBF, OS-ELM has faster learning speed and better generalization ability. However, similar to ELM, OS-ELM also has instability in different trials of simulations. In addition, for large data sets, OS-ELM will not halt when there are training samples not be learned, this phenomenon results in long learning time. In order to deal with the problems, this paper proposes an algorithm named E-OS-ELM for integrating OS-ELM to classify large data sets. The experimental results show that the proposed method is effective and efficient; it can effectively overcome the drawbacks mentioned above.
KW - Ensemble
KW - Extreme learning machine
KW - Large data set
KW - Sequential learning
UR - http://www.scopus.com/inward/record.url?scp=84938069158&partnerID=8YFLogxK
U2 - 10.1109/smc.2014.6974260
DO - 10.1109/smc.2014.6974260
M3 - Conference paper (refereed)
AN - SCOPUS:84938069158
T3 - IEEE International Conference on Systems, Man and Cybernetics
SP - 2250
EP - 2255
BT - Proceedings : 2014 IEEE International Conference on Systems, Man, and Cybernetics (SMC)
PB - IEEE
T2 - 2014 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2014
Y2 - 5 October 2014 through 8 October 2014
ER -