Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks
Recently, considerable advancement has been achieved in semisupervised multitask feature selection methods, which they exploit the shared information from multiple related tasks. Besides, these algorithms have adopted manifold learning to leverage both the unlabeled and labeled data since its labori...
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my.um.eprints.200442019-01-17T04:36:47Z http://eprints.um.edu.my/20044/ Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks Krishnasamy, Ganesh Paramesran, Raveendran TK Electrical engineering. Electronics Nuclear engineering Recently, considerable advancement has been achieved in semisupervised multitask feature selection methods, which they exploit the shared information from multiple related tasks. Besides, these algorithms have adopted manifold learning to leverage both the unlabeled and labeled data since its laborious to obtain adequate labeled training data. However, these semisupervised multitask selection feature algorithms are unable to naturally handle the multiview data since they are designed to deal single-view data. Existing studies have demonstrated that mining information enclosed in multiple views can drastically enhance the performance of feature selection. Multiview learning is capable of exploring the complementary and correlated knowledge from different views. In this paper, we incorporate multiview learning into semisupervised multitask feature selection framework and present a novel semisupervised multiview multitask feature selection framework. Our proposed algorithm is capable of exploiting complementary information from different feature views in each task while exploring the shared knowledge between multiple related tasks in a joint framework when the labeled training data is sparse. We develop an efficient iterative algorithm to optimize it since the objective function of the proposed method is non-smooth and difficult to solve. Experiment results on several multimedia applications have shown that the proposed algorithm is competitive compared with the other single-view feature selection algorithms. Elsevier 2019 Article PeerReviewed Krishnasamy, Ganesh and Paramesran, Raveendran (2019) Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks. Signal Processing: Image Communication, 70. pp. 68-78. ISSN 0923-5965 https://doi.org/10.1016/j.image.2018.09.008 doi:10.1016/j.image.2018.09.008 |
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TK Electrical engineering. Electronics Nuclear engineering Krishnasamy, Ganesh Paramesran, Raveendran Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
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Recently, considerable advancement has been achieved in semisupervised multitask feature selection methods, which they exploit the shared information from multiple related tasks. Besides, these algorithms have adopted manifold learning to leverage both the unlabeled and labeled data since its laborious to obtain adequate labeled training data. However, these semisupervised multitask selection feature algorithms are unable to naturally handle the multiview data since they are designed to deal single-view data. Existing studies have demonstrated that mining information enclosed in multiple views can drastically enhance the performance of feature selection. Multiview learning is capable of exploring the complementary and correlated knowledge from different views. In this paper, we incorporate multiview learning into semisupervised multitask feature selection framework and present a novel semisupervised multiview multitask feature selection framework. Our proposed algorithm is capable of exploiting complementary information from different feature views in each task while exploring the shared knowledge between multiple related tasks in a joint framework when the labeled training data is sparse. We develop an efficient iterative algorithm to optimize it since the objective function of the proposed method is non-smooth and difficult to solve. Experiment results on several multimedia applications have shown that the proposed algorithm is competitive compared with the other single-view feature selection algorithms. |
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Article |
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Krishnasamy, Ganesh Paramesran, Raveendran |
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Krishnasamy, Ganesh Paramesran, Raveendran |
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Krishnasamy, Ganesh |
title |
Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
title_short |
Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
title_full |
Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
title_fullStr |
Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
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Multiview Laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
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multiview laplacian semisupervised feature selection by leveraging shared knowledge among multiple tasks |
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Elsevier |
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2019 |
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http://eprints.um.edu.my/20044/ https://doi.org/10.1016/j.image.2018.09.008 |
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