AdaBoost-assisted Extreme Learning Machine for Efficient Online Sequential Classification
Chen, Yi-Ta, Chuang, Yu-Chuan, An-Yeu, null, Wu, null
In this paper, we propose an AdaBoost - assisted extreme learning machine for efficient online sequential classification (AOS - ELM) . In order to achieve better accuracy in online sequential learning scenarios, we utilize the cost - sensitive algorithm - AdaBoost, which diversifying the weak classifiers, and addin g the forgetting mechanism, which stabilizing the performance during the training procedure . Hence, AOS - ELM adapt s bet ter to sequentially arrived data compared with other voting based methods. The experim ent results show AOS - ELM can achieve 9 4.41 % accuracy on MNIST dataset, which is the theoretical accuracy bound performed by original batch learning algorithm, AdaBoost - EL M. Moreover, with the forgetting mechanism, the standard deviation of accuracy during the online sequential learning process is reduced to 8.26x.
Sep-16-2019
- Genre:
- Instructional Material > Online (0.57)
- Research Report > New Finding (0.48)
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- Education > Educational Setting > Online (1.00)
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