1. Improved Meta-ELM with error feedback incremental ELM as hidden nodes.
- Author
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Zou, Weidong, Yao, Fenxi, Zhang, Baihai, and Guan, Zixiao
- Subjects
MACHINE learning ,ARTIFICIAL neural networks ,META-analysis ,ARTIFICIAL intelligence ,ALGORITHMS - Abstract
Liao et al. (Neurocomputing 128:81-87, 2014) proposed a meta-learning approach to extreme learning machine (Meta-ELM), which can obtain good generalization performance by training multiple ELMs. However, one of its open problems is overfitting when minimizing training error. In this paper, we propose an improved meta-learning model of ELM (improved Meta-ELM) to handle the problem. The improved Meta-ELM architecture is composed of some base ELMs which are error feedback incremental extreme learning machine (EFI-ELM) and the top ELM. The improved Meta-ELM includes two stages. First, each base ELM with EFI-ELM is trained on a subset of training data. Then, the top ELM learns with the base ELMs as hidden nodes. Simulation results on some artificial and benchmark datasets show that the proposed improved Meta-ELM model is more feasible and effective than Meta-ELM. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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