Research Area:  Machine Learning
In the course of the recent decade, ELM intrigued various scholars of different domains in a brief timeframe because of its noteworthy qualities over single hidden-layer feed-forward neural networks. The extraordinary Extreme Learning Machine (ELM) as a simple and fast feed forward neural network has been greatly presented in different zones. Not the same as the overall SLFN (single-layer neural network), the information loads and inclinations in the enclosed ELM layer are haphazardly formed, so only a small cost algorithm is required to prepare the model. However, the procedure for the selection of input loads and predispositions on an arbitrary basis might give rise to a poorly presented issue. Although ELM has many advantages, it also has some potential shortcomings such as sensitivity and specificity of performance to the underlying state of the neurons that are hidden, input weights and the choice of functions of activation. So as to beat the impediments of the classic ELM, numerous metaheuristic algorithms have proposed to optimize the various segments of ELM by analysts intending to improve the ELM model performance for various kinds of complex issues and applications. Hence through this study we intend to study the different algorithms developed for enhancing the ELM performance.
Keywords:  
Extreme Learning Machine
Optimization
single-layer neural network
Deep Learning
Machine Learning
Author(s) Name:  Rathod Nilesh; Wankhade Sunil
Journal name:  
Conferrence name:  7th International Conference on Advanced Computing and Communication Systems (ICACCS)
Publisher name:  IEEE
DOI:  10.1109/ICACCS51430.2021.9442007
Volume Information:  
Paper Link:   https://ieeexplore.ieee.org/abstract/document/9442007