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An adaptive stopping criterion for backpropagation learning in feedforward neural network

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Associated content
gvpress.com
Date
2014-08
Author
Lalis, Jeremias ORCID
Gerardo, Bobby ORCID
Byun, Yung-Cheol ORCID
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Abstract
In training artificial neural networks, Backpropagation has been frequently used and known to provide powerful tools for classification. Due to its capability to model linear and non-linear systems, it is widely applied to various areas, offering solutions and help to human experts. However, BP still has shortcomings and a lot of studies had already been done to overcome it. But one of the important elements of BP, the stopping criterion, was given a little attention. The Fisher's Iris data set was used to this study as input for standard B.P. Three experiments, using the different training set sizes, were conducted to measure the effectiveness of the proposed stopping criterion. The accuracy of the networks, trained in different data set sizes were also tested by using the corresponding testing sets. The experiments have shown that the proposed stopping criterion enabled the network to recognize its minimum acceptable error rate allowing it to learn to its maximum potential based on the presented patterns. The ubiquitous stopping criterion presented in this paper proved that the number of iterations to train the network should not be dictated by human since the accuracy of the network depends heavily on the number and quality of the training data.
Contributes to SDGs
SDG 9 - Industry, innovation and infrastructure
URI
https://hdl.handle.net/20.500.14353/644
Recommended Citation
Lalis, J., Gerardo, B., & Byun, Y.-C. (2014). An adaptive stopping criterion for backpropagation learning in feedforward neural network. International Journal of Multimedia and Ubiquitous Engineering, 9(8), 149-156.
DOI
10.14257/ijmue.2014.9.8.13
Type
Article
ISSN
1975-0080
Keywords
Adaptive stopping criterion Artificial neural networks Backpropagation Iterations Training set Iris data set Multivariate dataset Backpropagation neural networks Backpropagation algorithm Feedforward artificial neural network Multilayer perceptron Backpropagation learning method
Subject
Back propagation (Artificial intelligence) OCLC - FAST (Faceted Application of Subject Terminology) Neural networks (Computer science) OCLC - FAST (Faceted Application of Subject Terminology) Feedforward control systems OCLC - FAST (Faceted Application of Subject Terminology) Assistive computer technology OCLC - FAST (Faceted Application of Subject Terminology) Classification OCLC - FAST (Faceted Application of Subject Terminology) Data mining OCLC - FAST (Faceted Application of Subject Terminology)  OCLC - FAST (Faceted Application of Subject Terminology)
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