Online active learning with expert advice

In literature, learning with expert advice methods usually assume that a learner always obtain the true label of every incoming training instance at the end of each trial. However, in many real-world applications, acquiring the true labels of all instances can be both costly and time consuming, espe...

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Main Authors: Hao, Shuji, Hu, Peiying, Zhao, Peilin, Hoi, Steven C. H., Miao, Chunyan
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2020
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Online Access:https://hdl.handle.net/10356/143460
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1434602020-09-02T09:32:11Z Online active learning with expert advice Hao, Shuji Hu, Peiying Zhao, Peilin Hoi, Steven C. H. Miao, Chunyan School of Computer Science and Engineering Engineering::Computer science and engineering Online Learning Active Learning In literature, learning with expert advice methods usually assume that a learner always obtain the true label of every incoming training instance at the end of each trial. However, in many real-world applications, acquiring the true labels of all instances can be both costly and time consuming, especially for large-scale problems. For example, in the social media, data stream usually comes in a high speed and volume, and it is nearly impossible and highly costly to label all of the instances. In this article, we address this problem with active learning with expert advice, where the ground truth of an instance is disclosed only when it is requested by the proposed active query strategies. Our goal is to minimize the number of requests while training an online learning model without sacrificing the performance. To address this challenge, we propose a framework of active forecasters, which attempts to extend two fully supervised forecasters, Exponentially Weighted Average Forecaster and Greedy Forecaster, to tackle the task of online active learning (OAL) with expert advice. Specifically, we proposed two OAL with expert advice algorithms, named Active Exponentially Weighted Average Forecaster (AEWAF) and active greedy forecaster (AGF), by considering the difference of expert advices. To further improve the robustness of the proposed AEWAF and AGF algorithms in the noisy scenarios (where noisy experts exist), we also proposed two robust active learning with expert advice algorithms, named Robust Active Exponentially Weighted Average Forecaster and Robust Active Greedy Forecaster. We validate the efficacy of the proposed algorithms by an extensive set of experiments in both normal scenarios (where all of experts are comparably reliable) and noisy scenarios. 2020-09-02T09:00:22Z 2020-09-02T09:00:22Z 2018 Journal Article Hao, S., Hu, P., Zhao, P., Hoi, S. C. H. & Miao, C. (2018). Online active learning with expert advice. ACM Transactions on Knowledge Discovery from Data, 12(5). doi: 10.1145/3201604 1556-4681 https://hdl.handle.net/10356/143460 10.1145/3201604 5 12 en ACM Transactions on Knowledge Discovery from Data © 2018 Association for Computing Machinery (ACM). All rights reserved.
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Online Learning
Active Learning
spellingShingle Engineering::Computer science and engineering
Online Learning
Active Learning
Hao, Shuji
Hu, Peiying
Zhao, Peilin
Hoi, Steven C. H.
Miao, Chunyan
Online active learning with expert advice
description In literature, learning with expert advice methods usually assume that a learner always obtain the true label of every incoming training instance at the end of each trial. However, in many real-world applications, acquiring the true labels of all instances can be both costly and time consuming, especially for large-scale problems. For example, in the social media, data stream usually comes in a high speed and volume, and it is nearly impossible and highly costly to label all of the instances. In this article, we address this problem with active learning with expert advice, where the ground truth of an instance is disclosed only when it is requested by the proposed active query strategies. Our goal is to minimize the number of requests while training an online learning model without sacrificing the performance. To address this challenge, we propose a framework of active forecasters, which attempts to extend two fully supervised forecasters, Exponentially Weighted Average Forecaster and Greedy Forecaster, to tackle the task of online active learning (OAL) with expert advice. Specifically, we proposed two OAL with expert advice algorithms, named Active Exponentially Weighted Average Forecaster (AEWAF) and active greedy forecaster (AGF), by considering the difference of expert advices. To further improve the robustness of the proposed AEWAF and AGF algorithms in the noisy scenarios (where noisy experts exist), we also proposed two robust active learning with expert advice algorithms, named Robust Active Exponentially Weighted Average Forecaster and Robust Active Greedy Forecaster. We validate the efficacy of the proposed algorithms by an extensive set of experiments in both normal scenarios (where all of experts are comparably reliable) and noisy scenarios.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Hao, Shuji
Hu, Peiying
Zhao, Peilin
Hoi, Steven C. H.
Miao, Chunyan
format Article
author Hao, Shuji
Hu, Peiying
Zhao, Peilin
Hoi, Steven C. H.
Miao, Chunyan
author_sort Hao, Shuji
title Online active learning with expert advice
title_short Online active learning with expert advice
title_full Online active learning with expert advice
title_fullStr Online active learning with expert advice
title_full_unstemmed Online active learning with expert advice
title_sort online active learning with expert advice
publishDate 2020
url https://hdl.handle.net/10356/143460
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