The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data

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building INTELEK Repository
collection Online Access
collectionurl https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072
date 2016-06-13 08:18
eventvenue Bandung, Indonesia
format Restricted Document
id 5926
institution UniSZA
originalfilename 0642-01-FH03-FIK-17-10509.pdf
person mumtazimah
recordtype oai_dc
resourceurl https://intelek.unisza.edu.my/intelek/pages/view.php?ref=5926
spelling 5926 https://intelek.unisza.edu.my/intelek/pages/view.php?ref=5926 https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072 Restricted Document Conference Conference Paper application/pdf 10 1.6 Adobe Acrobat Pro DC 20 Paper Capture Plug-in mumtazimah 2016-06-13 08:18 0642-01-FH03-FIK-17-10509.pdf UniSZA Private Access The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data This paper present an enhanced approach for ensemble multi classifier of Artificial Neural Networks (ANN). The motivation of this study is to enhance the ANN capability and performance using reconstructed heterogeneous if the homogenous classifiers are deployed. The clusters set are partitioned into two sets of cluster; clusters of a same class and clusters of multi class which both of them were using different partition techniques. Each partitions represented by an independent classifier of highly correlated patterns from different classes. Each set of clusters are compared and the final decision is voted by using majority voting. The approach is tested on benchmark large dataset and small dataset. The results show that the proposed approach achieved almost near to 99% of accuracy which is better classification than the existing approach. The Second International Conference on Soft Computing and Data Mining (SCDM-2016) Bandung, Indonesia
spellingShingle The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
summary This paper present an enhanced approach for ensemble multi classifier of Artificial Neural Networks (ANN). The motivation of this study is to enhance the ANN capability and performance using reconstructed heterogeneous if the homogenous classifiers are deployed. The clusters set are partitioned into two sets of cluster; clusters of a same class and clusters of multi class which both of them were using different partition techniques. Each partitions represented by an independent classifier of highly correlated patterns from different classes. Each set of clusters are compared and the final decision is voted by using majority voting. The approach is tested on benchmark large dataset and small dataset. The results show that the proposed approach achieved almost near to 99% of accuracy which is better classification than the existing approach.
title The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
title_full The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
title_fullStr The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
title_full_unstemmed The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
title_short The Reconstructed Heterogeneity to Enhance Ensemble Neural Network for Large Data
title_sort reconstructed heterogeneity to enhance ensemble neural network for large data