Online multiple kernel classification

Although both online learning and kernel learning have been studied extensively in machine learning, there is limited effort in addressing the intersecting research problems of these two important topics. As an attempt to fill the gap, we address a new research problem, termed Online Multiple Kernel...

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Main Authors: Jin, Rong., Zhao, Peilin., Yang, Tianbao., Hoi, Steven C. H.
Other Authors: School of Computer Engineering
Format: Article
Language:English
Published: 2013
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Online Access:https://hdl.handle.net/10356/84500
http://hdl.handle.net/10220/17285
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-845002020-05-28T07:18:24Z Online multiple kernel classification Jin, Rong. Zhao, Peilin. Yang, Tianbao. Hoi, Steven C. H. School of Computer Engineering DRNTU::Engineering::Computer science and engineering Although both online learning and kernel learning have been studied extensively in machine learning, there is limited effort in addressing the intersecting research problems of these two important topics. As an attempt to fill the gap, we address a new research problem, termed Online Multiple Kernel Classification (OMKC), which learns a kernel-based prediction function by selecting a subset of predefined kernel functions in an online learning fashion. OMKC is in general more challenging than typical online learning because both the kernel classifiers and the subset of selected kernels are unknown, and more importantly the solutions to the kernel classifiers and their combination weights are correlated. The proposed algorithms are based on the fusion of two online learning algorithms, i.e., the Perceptron algorithm that learns a classifier for a given kernel, and the Hedge algorithm that combines classifiers by linear weights. We develop stochastic selection strategies that randomly select a subset of kernels for combination and model updating, thus improving the learning efficiency. Our empirical study with 15 data sets shows promising performance of the proposed algorithms for OMKC in both learning efficiency and prediction accuracy. 2013-11-05T06:14:21Z 2019-12-06T15:46:10Z 2013-11-05T06:14:21Z 2019-12-06T15:46:10Z 2012 2012 Journal Article Hoi, S. C. H., Jin, R., Zhao, P., & Yang, T. (2013). Online Multiple Kernel Classification. Machine Learning, 90(2), 289-316. https://hdl.handle.net/10356/84500 http://hdl.handle.net/10220/17285 10.1007/s10994-012-5319-2 en Machine learning
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Jin, Rong.
Zhao, Peilin.
Yang, Tianbao.
Hoi, Steven C. H.
Online multiple kernel classification
description Although both online learning and kernel learning have been studied extensively in machine learning, there is limited effort in addressing the intersecting research problems of these two important topics. As an attempt to fill the gap, we address a new research problem, termed Online Multiple Kernel Classification (OMKC), which learns a kernel-based prediction function by selecting a subset of predefined kernel functions in an online learning fashion. OMKC is in general more challenging than typical online learning because both the kernel classifiers and the subset of selected kernels are unknown, and more importantly the solutions to the kernel classifiers and their combination weights are correlated. The proposed algorithms are based on the fusion of two online learning algorithms, i.e., the Perceptron algorithm that learns a classifier for a given kernel, and the Hedge algorithm that combines classifiers by linear weights. We develop stochastic selection strategies that randomly select a subset of kernels for combination and model updating, thus improving the learning efficiency. Our empirical study with 15 data sets shows promising performance of the proposed algorithms for OMKC in both learning efficiency and prediction accuracy.
author2 School of Computer Engineering
author_facet School of Computer Engineering
Jin, Rong.
Zhao, Peilin.
Yang, Tianbao.
Hoi, Steven C. H.
format Article
author Jin, Rong.
Zhao, Peilin.
Yang, Tianbao.
Hoi, Steven C. H.
author_sort Jin, Rong.
title Online multiple kernel classification
title_short Online multiple kernel classification
title_full Online multiple kernel classification
title_fullStr Online multiple kernel classification
title_full_unstemmed Online multiple kernel classification
title_sort online multiple kernel classification
publishDate 2013
url https://hdl.handle.net/10356/84500
http://hdl.handle.net/10220/17285
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