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Optimizing Error Function of Backpropagation Neural Network

Munmi Gogoi1 , Ashim Jyoti Gogoi2 , Shahin Ara Begum3

Section:Research Paper, Product Type: Journal Paper
Volume-7 , Issue-4 , Page no. 1011-1016, Apr-2019

CrossRef-DOI:   https://doi.org/10.26438/ijcse/v7i4.10111016

Online published on Apr 30, 2019

Copyright © Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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IEEE Style Citation: Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum, “Optimizing Error Function of Backpropagation Neural Network,” International Journal of Computer Sciences and Engineering, Vol.7, Issue.4, pp.1011-1016, 2019.

MLA Style Citation: Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum "Optimizing Error Function of Backpropagation Neural Network." International Journal of Computer Sciences and Engineering 7.4 (2019): 1011-1016.

APA Style Citation: Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum, (2019). Optimizing Error Function of Backpropagation Neural Network. International Journal of Computer Sciences and Engineering, 7(4), 1011-1016.

BibTex Style Citation:
@article{Gogoi_2019,
author = {Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum},
title = {Optimizing Error Function of Backpropagation Neural Network},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {4 2019},
volume = {7},
Issue = {4},
month = {4},
year = {2019},
issn = {2347-2693},
pages = {1011-1016},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=4158},
doi = {https://doi.org/10.26438/ijcse/v7i4.10111016}
publisher = {IJCSE, Indore, INDIA},
}

RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v7i4.10111016}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=4158
TI - Optimizing Error Function of Backpropagation Neural Network
T2 - International Journal of Computer Sciences and Engineering
AU - Munmi Gogoi, Ashim Jyoti Gogoi, Shahin Ara Begum
PY - 2019
DA - 2019/04/30
PB - IJCSE, Indore, INDIA
SP - 1011-1016
IS - 4
VL - 7
SN - 2347-2693
ER -

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Abstract

Backpropagation algorithm (BP) is one of the most popularized and effective learning algorithm for learning neural networks, starting with Multilayer perceptron’s (MLP’s) to today’s Deep learning models in the domain of Artificial Intelligence (AI). Backpropagation algorithm works on two phases. The forward phase feed the network with input and communication links with synaptic weights, the activation function decides whether the hidden neurons fire or not. The primary focus of the present work is on the backpropagation error, which decides the amount of weight updating based on the errors. The driving force of the algorithm is to minimize the error by gradient descent where we differentiate the error function to get the gradient of the error and update the weights to reduce the error. In this paper, our approach is to reduce the error of Backpropagation neural network (BPNN) based on constraints using swarm intelligence based optimization method. For this, the optimization problem has been formulated mathematically with subjected constraints under the acceptable range of network parameters. This research investigation presents a comparison of results obtained from solving the minimization problem with different variants of swarm intelligence technique such as PSO, HBPSO, and ALCPSO.

Key-Words / Index Term

Backpropagation, Deep learning, PSO, HBPSO, ALCPSO

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