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Abstract

In this paper, comparative evaluation of various local and global learning algorithms in neural network modeling was performed for ore grade estimation in three deposits: gold, bauxite, and iron ore. Four local learning algorithms, standard back-propagation, back-propagation with momentum, quickprop back-propagation, and Levenberg-Marquardt back-propagation, along with two global learning algorithms, NOVEL and simulated annealing, were investigated for this purpose. The study results revealed that no benefit was achieved using global learning algorithms over local learning algorithms. The reasons for showing equivalent performance of global and local learning algorithms was the smooth error surface of neural network training for these specific case studies. However, a separate exercise involving local and global learning algorithms on a nonlinear multimodal optimization of a Rastrigin function, containing many local minima, clearly demonstrated the superior performance of global learning algorithms over local learning algorithms. Although no benefit was found by using global learning algorithms of neural network training for these specific case studies, as a safeguard against getting trapped in local minima, it is better to apply global learning algorithms in neural network training since many real-life applications of neural network modeling show local minima problems in error surface.[PUBLICATION ABSTRACT]

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Identifier / keyword
Title
Comparative Evaluation of Neural Network Learning Algorithms for Ore Grade Estimation
Publication title
Volume
38
Issue
2
Pages
175-197
Publication year
2006
Publication date
Feb 2006
Publisher
Springer Nature B.V.
Place of publication
New York
Country of publication
Netherlands
Publication subject
ISSN
08828121
Source type
Scholarly Journal
Language of publication
English
Document type
Feature
ProQuest document ID
728547857
Document URL
https://www.proquest.com/scholarly-journals/comparative-evaluation-neural-network-learning/docview/728547857/se-2?accountid=208611
Copyright
Springer Science+Business Media, Inc. 2006
Last updated
2024-10-05
Database
ProQuest One Academic