Dimension reduction and clustering of high dimensional data using auto associative neural networks
The task to capture and interpret information hidden inside high-dimensional data can be considered very complicated and challenging. Usually, dimension reduction technique may be considered as the first step to data analysis and exploration. The focus of this paper is on high-dimensional data dimen...
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my.utm.403822019-03-05T01:46:58Z http://eprints.utm.my/id/eprint/40382/ Dimension reduction and clustering of high dimensional data using auto associative neural networks Mohd. Zin, Zalhan Yusof, Rubiyah Mesbah, Ehsan TK Electrical engineering. Electronics Nuclear engineering The task to capture and interpret information hidden inside high-dimensional data can be considered very complicated and challenging. Usually, dimension reduction technique may be considered as the first step to data analysis and exploration. The focus of this paper is on high-dimensional data dimension reduction using a supervised artificial neural networks technique known as Auto-Associative Neural Networks (AANN). The AANN can be considered as a powerful tool in data analysis and clustering with the ability to deal with linear and nonlinear correlation among variables. This technique is sometimes referred to as nonlinear principal component analysis (NLPCA), Encoding-Decoding networks, or bottleneck neural networks (BNN) due to its unique structure. It reduces high-dimensional data into low-dimensional data on its bottleneck layer which can later be used for data transmission, clustering and visualization. In this paper, a structurally flexible AANN is developed by using high level computer language, applied and studied on two case studies of Iris flowers and Italian olive oils datasets. The purpose of the work was to investigate the ability of AANN to reduce dimension of high-dimensional data on small (Iris) and large (Olive) datasets. The results have shown that AANN has been able to compress high-dimensional data into only one or two non-linear 2013 Article PeerReviewed Mohd. Zin, Zalhan and Yusof, Rubiyah and Mesbah, Ehsan (2013) Dimension reduction and clustering of high dimensional data using auto associative neural networks. International Journal of Computer Applications, 72 (11). pp. 31-37. ISSN 0975-8887 http://dx.doi.org/10.5120/12540-9090 DOI:10.5120/12540-9090 |
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TK Electrical engineering. Electronics Nuclear engineering Mohd. Zin, Zalhan Yusof, Rubiyah Mesbah, Ehsan Dimension reduction and clustering of high dimensional data using auto associative neural networks |
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The task to capture and interpret information hidden inside high-dimensional data can be considered very complicated and challenging. Usually, dimension reduction technique may be considered as the first step to data analysis and exploration. The focus of this paper is on high-dimensional data dimension reduction using a supervised artificial neural networks technique known as Auto-Associative Neural Networks (AANN). The AANN can be considered as a powerful tool in data analysis and clustering with the ability to deal with linear and nonlinear correlation among variables. This technique is sometimes referred to as nonlinear principal component analysis (NLPCA), Encoding-Decoding networks, or bottleneck neural networks (BNN) due to its unique structure. It reduces high-dimensional data into low-dimensional data on its bottleneck layer which can later be used for data transmission, clustering and visualization. In this paper, a structurally flexible AANN is developed by using high level computer language, applied and studied on two case studies of Iris flowers and Italian olive oils datasets. The purpose of the work was to investigate the ability of AANN to reduce dimension of high-dimensional data on small (Iris) and large (Olive) datasets. The results have shown that AANN has been able to compress high-dimensional data into only one or two non-linear |
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Article |
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Mohd. Zin, Zalhan Yusof, Rubiyah Mesbah, Ehsan |
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Mohd. Zin, Zalhan Yusof, Rubiyah Mesbah, Ehsan |
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Mohd. Zin, Zalhan |
title |
Dimension reduction and clustering of high dimensional data using auto associative neural networks |
title_short |
Dimension reduction and clustering of high dimensional data using auto associative neural networks |
title_full |
Dimension reduction and clustering of high dimensional data using auto associative neural networks |
title_fullStr |
Dimension reduction and clustering of high dimensional data using auto associative neural networks |
title_full_unstemmed |
Dimension reduction and clustering of high dimensional data using auto associative neural networks |
title_sort |
dimension reduction and clustering of high dimensional data using auto associative neural networks |
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2013 |
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http://eprints.utm.my/id/eprint/40382/ http://dx.doi.org/10.5120/12540-9090 |
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