Distributed multi-task classification : a decentralized online learning approach
Although dispersing one single task to distributed learning nodes has been intensively studied by the previous research, multi-task learning on distributed networks is still an area that has not been fully exploited, especially under decentralized settings. The challenge lies in the fact that differ...
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sg-ntu-dr.10356-829622020-03-07T11:48:54Z Distributed multi-task classification : a decentralized online learning approach Zhang, Chi Zhao, Peilin Hao, Shuji Soh, Yeng Chai Lee, Bu Sung Miao, Chunyan Hoi, Steven C. H. School of Computer Science and Engineering School of Electrical and Electronic Engineering Decentralized Distributed Learning Multi-task Learning Engineering::Electrical and electronic engineering Although dispersing one single task to distributed learning nodes has been intensively studied by the previous research, multi-task learning on distributed networks is still an area that has not been fully exploited, especially under decentralized settings. The challenge lies in the fact that different tasks may have different optimal learning weights while communication through the distributed network forces all tasks to converge to an unique classifier. In this paper, we present a novel algorithm to overcome this challenge and enable learning multiple tasks simultaneously on a decentralized distributed network. Specifically, the learning framework can be separated into two phases: (i) multi-task information is shared within each node on the first phase; (ii) communication between nodes then leads the whole network to converge to a common minimizer. Theoretical analysis indicates that our algorithm achieves a O(T−−√) regret bound when compared with the best classifier in hindsight, which is further validated by experiments on both synthetic and real-world datasets. NRF (Natl Research Foundation, S’pore) 2019-07-03T02:56:29Z 2019-12-06T15:09:04Z 2019-07-03T02:56:29Z 2019-12-06T15:09:04Z 2018 Journal Article Zhang, C., Zhao, P., Hao, S., Soh, Y. C., Lee, B. S., Miao, C., & Hoi, S. C. H. (2018). Distributed multi-task classification: a decentralized online learning approach. Machine Learning, 107(4), 727-747. doi:10.1007/s10994-017-5676-y 0885-6125 https://hdl.handle.net/10356/82962 http://hdl.handle.net/10220/49099 10.1007/s10994-017-5676-y en Machine Learning © 2017 The Author(s). All rights reserved. |
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Decentralized Distributed Learning Multi-task Learning Engineering::Electrical and electronic engineering Zhang, Chi Zhao, Peilin Hao, Shuji Soh, Yeng Chai Lee, Bu Sung Miao, Chunyan Hoi, Steven C. H. Distributed multi-task classification : a decentralized online learning approach |
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Although dispersing one single task to distributed learning nodes has been intensively studied by the previous research, multi-task learning on distributed networks is still an area that has not been fully exploited, especially under decentralized settings. The challenge lies in the fact that different tasks may have different optimal learning weights while communication through the distributed network forces all tasks to converge to an unique classifier. In this paper, we present a novel algorithm to overcome this challenge and enable learning multiple tasks simultaneously on a decentralized distributed network. Specifically, the learning framework can be separated into two phases: (i) multi-task information is shared within each node on the first phase; (ii) communication between nodes then leads the whole network to converge to a common minimizer. Theoretical analysis indicates that our algorithm achieves a O(T−−√) regret bound when compared with the best classifier in hindsight, which is further validated by experiments on both synthetic and real-world datasets. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Zhang, Chi Zhao, Peilin Hao, Shuji Soh, Yeng Chai Lee, Bu Sung Miao, Chunyan Hoi, Steven C. H. |
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Article |
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Zhang, Chi Zhao, Peilin Hao, Shuji Soh, Yeng Chai Lee, Bu Sung Miao, Chunyan Hoi, Steven C. H. |
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Zhang, Chi |
title |
Distributed multi-task classification : a decentralized online learning approach |
title_short |
Distributed multi-task classification : a decentralized online learning approach |
title_full |
Distributed multi-task classification : a decentralized online learning approach |
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Distributed multi-task classification : a decentralized online learning approach |
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Distributed multi-task classification : a decentralized online learning approach |
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distributed multi-task classification : a decentralized online learning approach |
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2019 |
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https://hdl.handle.net/10356/82962 http://hdl.handle.net/10220/49099 |
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1681040048652288000 |