Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks

. In this paper, operational and complexity analysis model for ensemble Artificial Neural Networks (ANN) multiple classifiers are investigated. The main idea behind this, is lie on large dataset classification complexity and burden are to be moderated by using partitioning for parallel tasks and com...

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主要な著者: Mohamad, Prof. Madya Ts. Dr. Mumtazimah, Abd Hamid, Nazirah
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言語:English
出版事項: Springer- Verlag 2015
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オンライン・アクセス:http://eprints.unisza.edu.my/3139/1/FH05-FIK-15-03849.pdf
http://eprints.unisza.edu.my/3139/
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spelling my-unisza-ir.31392022-01-09T02:50:00Z http://eprints.unisza.edu.my/3139/ Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks Mohamad, Prof. Madya Ts. Dr. Mumtazimah Abd Hamid, Nazirah TK Electrical engineering. Electronics Nuclear engineering . In this paper, operational and complexity analysis model for ensemble Artificial Neural Networks (ANN) multiple classifiers are investigated. The main idea behind this, is lie on large dataset classification complexity and burden are to be moderated by using partitioning for parallel tasks and combining them to enhance the capability of a classifier. The complexity of the single ANN and ensemble ANN are obtained from the estimates of upper bounds of converged functional error with the partitioning of dataset. The estimates derived using Apriori method shows that the use of an ensemble ANN with different approach is feasible where such problem with a high number of inputs and classes can be solved with time complexity of for some , which is a type of polynomial. This result is in line with the importance of good performance achieved by diversity rule applied with the use of reordering technique. As a conclusion, an ensemble heterogeneous ANN classifier is practical and relevance to theoretical and experimental of combiners for ensemble ANN classifier systems for large datase Springer- Verlag 2015 Book Section NonPeerReviewed text en http://eprints.unisza.edu.my/3139/1/FH05-FIK-15-03849.pdf Mohamad, Prof. Madya Ts. Dr. Mumtazimah and Abd Hamid, Nazirah (2015) Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks. In: Lecture Notes in Electrical Engineering. Springer- Verlag, pp. 1-8. ISBN 1876-1100
institution Universiti Sultan Zainal Abidin
building UNISZA Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sultan Zainal Abidin
content_source UNISZA Institutional Repository
url_provider https://eprints.unisza.edu.my/
language English
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Mohamad, Prof. Madya Ts. Dr. Mumtazimah
Abd Hamid, Nazirah
Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
description . In this paper, operational and complexity analysis model for ensemble Artificial Neural Networks (ANN) multiple classifiers are investigated. The main idea behind this, is lie on large dataset classification complexity and burden are to be moderated by using partitioning for parallel tasks and combining them to enhance the capability of a classifier. The complexity of the single ANN and ensemble ANN are obtained from the estimates of upper bounds of converged functional error with the partitioning of dataset. The estimates derived using Apriori method shows that the use of an ensemble ANN with different approach is feasible where such problem with a high number of inputs and classes can be solved with time complexity of for some , which is a type of polynomial. This result is in line with the importance of good performance achieved by diversity rule applied with the use of reordering technique. As a conclusion, an ensemble heterogeneous ANN classifier is practical and relevance to theoretical and experimental of combiners for ensemble ANN classifier systems for large datase
format Book Section
author Mohamad, Prof. Madya Ts. Dr. Mumtazimah
Abd Hamid, Nazirah
author_facet Mohamad, Prof. Madya Ts. Dr. Mumtazimah
Abd Hamid, Nazirah
author_sort Mohamad, Prof. Madya Ts. Dr. Mumtazimah
title Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
title_short Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
title_full Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
title_fullStr Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
title_full_unstemmed Complexity Approximation of Classification Task for Large Dataset Ensemble Artificial Neural Networks
title_sort complexity approximation of classification task for large dataset ensemble artificial neural networks
publisher Springer- Verlag
publishDate 2015
url http://eprints.unisza.edu.my/3139/1/FH05-FIK-15-03849.pdf
http://eprints.unisza.edu.my/3139/
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