Backward-Forward Algorithm: An Improvement towards Extreme Learning Machine
Machine Learning
2019-10-08 v4 Computer Vision and Pattern Recognition
Abstract
The extreme learning machine needs a large number of hidden nodes to generalize a single hidden layer neural network for a given training data-set. The need for more number of hidden nodes suggests that the neural-network is memorizing rather than generalizing the model. Hence, a supervised learning method is described here that uses Moore-Penrose approximation to determine both input-weight and output-weight in two epochs, namely, backward-pass and forward-pass. The proposed technique has an advantage over the back-propagation method in terms of iterations required and is superior to the extreme learning machine in terms of the number of hidden units necessary for generalization.
Cite
@article{arxiv.1907.10282,
title = {Backward-Forward Algorithm: An Improvement towards Extreme Learning Machine},
author = {Dibyasundar Das and Deepak Ranjan Nayak and Ratnakar Dash and Banshidhar Majhi},
journal= {arXiv preprint arXiv:1907.10282},
year = {2019}
}
Comments
12 Pages, 11 figures, to be submitted to journal