Online Multiple Kernel Learning: Algorithms and Mistake Bounds
Online learning and kernel learning are two active research topics in machine learning. Although each of them has been studied extensively, there is a limited effort in addressing the intersecting research. In this paper, we introduce a new research problem, termed Online Multiple Kernel Learning (O...
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sg-smu-ink.sis_research-33592018-12-04T06:55:44Z Online Multiple Kernel Learning: Algorithms and Mistake Bounds JIN, Rong HOI, Steven C. H. YANG, Tianbao Online learning and kernel learning are two active research topics in machine learning. Although each of them has been studied extensively, there is a limited effort in addressing the intersecting research. In this paper, we introduce a new research problem, termed Online Multiple Kernel Learning (OMKL), that aims to learn a kernel based prediction function from a pool of predefined kernels in an online learning fashion. OMKL is generally more challenging than typical online learning because both the kernel classifiers and their linear combination weights must be learned simultaneously. In this work, we consider two setups for OMKL, i.e. combining binary predictions or real-valued outputs from multiple kernel classifiers, and we propose both deterministic and stochastic approaches in the two setups for OMKL. The deterministic approach updates all kernel classifiers for every misclassified example, while the stochastic approach randomly chooses a classifier(s) for updating according to some sampling strategies. Mistake bounds are derived for all the proposed OMKL algorithms. 2010-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/2359 info:doi/10.1007/978-3-642-16108-7_31 https://ink.library.smu.edu.sg/context/sis_research/article/3359/viewcontent/Online_Multiple_Kernel_Learning_Algorithms_and_Mistake_Bounds.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University On-line learning and relative loss bounds Kernels Computer Sciences Databases and Information Systems |
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On-line learning and relative loss bounds Kernels Computer Sciences Databases and Information Systems JIN, Rong HOI, Steven C. H. YANG, Tianbao Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
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Online learning and kernel learning are two active research topics in machine learning. Although each of them has been studied extensively, there is a limited effort in addressing the intersecting research. In this paper, we introduce a new research problem, termed Online Multiple Kernel Learning (OMKL), that aims to learn a kernel based prediction function from a pool of predefined kernels in an online learning fashion. OMKL is generally more challenging than typical online learning because both the kernel classifiers and their linear combination weights must be learned simultaneously. In this work, we consider two setups for OMKL, i.e. combining binary predictions or real-valued outputs from multiple kernel classifiers, and we propose both deterministic and stochastic approaches in the two setups for OMKL. The deterministic approach updates all kernel classifiers for every misclassified example, while the stochastic approach randomly chooses a classifier(s) for updating according to some sampling strategies. Mistake bounds are derived for all the proposed OMKL algorithms. |
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text |
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JIN, Rong HOI, Steven C. H. YANG, Tianbao |
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JIN, Rong HOI, Steven C. H. YANG, Tianbao |
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JIN, Rong |
title |
Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
title_short |
Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
title_full |
Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
title_fullStr |
Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
title_full_unstemmed |
Online Multiple Kernel Learning: Algorithms and Mistake Bounds |
title_sort |
online multiple kernel learning: algorithms and mistake bounds |
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Institutional Knowledge at Singapore Management University |
publishDate |
2010 |
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https://ink.library.smu.edu.sg/sis_research/2359 https://ink.library.smu.edu.sg/context/sis_research/article/3359/viewcontent/Online_Multiple_Kernel_Learning_Algorithms_and_Mistake_Bounds.pdf |
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