An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments
In real life, data are not always generated under stationary environments. However, traditional learning systems have normally assumed that the property of data streams is stationary over time, and this sometimes leads to the degradation in the system performance when there are some hidden contexts...
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THE INSTITUTE OF SYSTEMS, CONTROL AND INFORMATION ENGINEERS (ISCIE)
2014
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my.unimas.ir.397062022-09-14T08:38:58Z http://ir.unimas.my/id/eprint/39706/ An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments Annie, Joseph Young Min, Jang Seiichi, Ozawa Minho, Lee TK Electrical engineering. Electronics Nuclear engineering In real life, data are not always generated under stationary environments. However, traditional learning systems have normally assumed that the property of data streams is stationary over time, and this sometimes leads to the degradation in the system performance when there are some hidden contexts changes (e.g. changes in class boundaries and temporal trends in time series). Such context changes are called concept drifts, and various methods to handle concept drifts have been developed in machine learning and data mining fields. However, most of them are aiming for building classifier models. Considering that class boundaries have changed over time under non-stationary environments, extracted features should also be adapted to concept drifts autonomously. In this paper, we propose an extension of incremental linear discriminant analysis (ILDA) as an online feature extraction method under non-stationary environments. The extended ILDA has the following two functions: concept-drift detection and knowledge transfer. The recognition performance of the extended ILDA is evaluated for three benchmark data sets. Experimental results demonstrate that the recognition performance in the extended ILDA is greatly improved by introducing the knowledge transfer after the concept-drift detection THE INSTITUTE OF SYSTEMS, CONTROL AND INFORMATION ENGINEERS (ISCIE) 2014 Article PeerReviewed text en http://ir.unimas.my/id/eprint/39706/1/27_133.pdf Annie, Joseph and Young Min, Jang and Seiichi, Ozawa and Minho, Lee (2014) An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments. Transactions of the Institute of Systems, Control and Information Engineers, 27 (4). pp. 133-140. ISSN 2185-811X https://www.jstage.jst.go.jp/browse/iscie |
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TK Electrical engineering. Electronics Nuclear engineering Annie, Joseph Young Min, Jang Seiichi, Ozawa Minho, Lee An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
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In real life, data are not always generated under stationary environments. However, traditional learning systems have normally assumed that the property of data streams is stationary over time, and this sometimes leads to the degradation in the system performance when there are some hidden contexts changes (e.g. changes in class boundaries and temporal trends in time series). Such context changes are called concept drifts, and various methods to handle concept drifts have been developed in machine learning and data mining fields. However, most of them are aiming for building classifier models. Considering that class boundaries have changed over time under non-stationary environments, extracted features should also be adapted to concept drifts autonomously. In this paper, we propose an extension of incremental linear discriminant analysis (ILDA) as an online feature extraction method under non-stationary environments. The extended ILDA has the following two functions: concept-drift detection and knowledge transfer. The recognition performance of the extended ILDA is evaluated for three benchmark data sets. Experimental results demonstrate that the recognition performance in the extended ILDA is greatly improved by introducing the knowledge transfer after the concept-drift detection |
format |
Article |
author |
Annie, Joseph Young Min, Jang Seiichi, Ozawa Minho, Lee |
author_facet |
Annie, Joseph Young Min, Jang Seiichi, Ozawa Minho, Lee |
author_sort |
Annie, Joseph |
title |
An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
title_short |
An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
title_full |
An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
title_fullStr |
An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
title_full_unstemmed |
An Incremental Linear Discriminant Analysis for Data Streams Under Non-stationary Environments |
title_sort |
incremental linear discriminant analysis for data streams under non-stationary environments |
publisher |
THE INSTITUTE OF SYSTEMS, CONTROL AND INFORMATION ENGINEERS (ISCIE) |
publishDate |
2014 |
url |
http://ir.unimas.my/id/eprint/39706/1/27_133.pdf http://ir.unimas.my/id/eprint/39706/ https://www.jstage.jst.go.jp/browse/iscie |
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1744357795948396544 |