EXTREME LEARNING MACHINES AND CLASSIFIER FUSION

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Published: 2016-06-28

Page: 89-94


SARTHAK YADAV

KIET, Ghaziabad, India

ANKUR SINGH BIST *

KIET, Ghaziabad, India

*Author to whom correspondence should be addressed.


Abstract

Extreme learning machine (ELM) was proposed as a new efficient learning algorithm for single-hidden layer feed forward neural networks (SLFN) in recent years. It is featured by its much faster training speed, non-iterative training procedure and better generalized performance over traditional SLFN learning techniques. In this paper, we do a comparative study of how ELM stands against various Classification techniques, general performance and ELM performance in Ensemble Setting. We’ll compare the performance using various evaluation metrics.

Keywords: ELM, classifiers, classification, ensemble methods


How to Cite

YADAV, SARTHAK, and ANKUR SINGH BIST. 2016. “EXTREME LEARNING MACHINES AND CLASSIFIER FUSION”. Journal of Basic and Applied Research International 18 (2):89-94. https://ikprress.org/index.php/JOBARI/article/view/4027.

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