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Learning to sample: An active learning framework

dc.contributor.authorShao, Jingyu
dc.contributor.authorWang, Qing
dc.contributor.authorLiu, Fangbing
dc.contributor.editorWang, J
dc.contributor.editorShim, K
dc.contributor.editorWu, X
dc.coverage.spatialBeijing, China
dc.date.accessioned2024-05-10T00:58:44Z
dc.date.createdNov 8-11 2019
dc.date.issued2020
dc.date.updated2023-01-15T07:16:34Z
dc.description.abstractMeta-learning algorithms for active learning are emerging as a promising paradigm for learning the “best” active learning strategy. However, current learning-based active learning approaches still require sufficient training data so as to generalize meta-learning models for active learning. This is contrary to the nature of active learning which typically starts with a small number of labeled samples. The unavailability of large amounts of labeled samples for training meta-learning models would inevitably lead to poor performance (e.g., instabilities and overfitting). In our paper, we tackle these issues by proposing a novel learning-based active learning framework, called Learning To Sample (LTS). This framework has two key components: a sampling model and a boosting model, which can mutually learn from each other in iterations to improve the performance of each other. Within this framework, the sampling model incorporates uncertainty sampling and diversity sampling into a unified process for optimization, enabling us to actively select the most representative and informative samples based on an optimized integration of uncertainty and diversity. To evaluate the effectiveness of the LTS framework, we have conducted extensive experiments on three different classification tasks: image classification, salary level prediction, and entity resolution. The experimental results show that our LTS framework significantly outperforms all the baselines when the label budget is limited, especially for datasets with highly imbalanced classes. In addition to this, our LTS framework can effectively tackle the cold start problem occurring in many existing active learning approaches.en_AU
dc.description.sponsorshipThis work was partially funded by the Australian Research Council (ARC) under Discovery Project DP160101934en_AU
dc.format.mimetypeapplication/pdfen_AU
dc.identifier.isbn978-1-7281-4603-4en_AU
dc.identifier.urihttp://hdl.handle.net/1885/317416
dc.language.isoen_AUen_AU
dc.provenancehttps://www.ieee.org/publications/rights/author-posting-policy.html..."The policy reaffirms the principle that authors are free to post their own version of their IEEE periodical or conference articles on their personal Web sites, those of their employers, or their funding agencies for the purpose of meeting public availability requirements prescribed by their funding agencies. " from the publisher site (as at 30 May 2024) © 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works
dc.publisherIEEEen_AU
dc.relationhttp://purl.org/au-research/grants/arc/DP160101934en_AU
dc.relation.ispartofseries19th IEEE International Conference on Data Mining, ICDM 2019en_AU
dc.rights© 2019 IEEEen_AU
dc.subjectactive learningen_AU
dc.subjectmeta-learningen_AU
dc.subjectuncertainty samplingen_AU
dc.subjectdiversity samplingen_AU
dc.subjectboostingen_AU
dc.titleLearning to sample: An active learning frameworken_AU
dc.typeConference paperen_AU
dcterms.accessRightsOpen Access
local.bibliographicCitation.lastpage547en_AU
local.bibliographicCitation.startpage538en_AU
local.contributor.affiliationShao, Jingyu, College of Engineering, Computing and Cybernetics, ANUen_AU
local.contributor.affiliationWang, Qing, College of Engineering, Computing and Cybernetics, ANUen_AU
local.contributor.affiliationLiu, Fangbing, College of Engineering, Computing and Cybernetics, ANUen_AU
local.contributor.authoruidShao, Jingyu, u6160749en_AU
local.contributor.authoruidWang, Qing, u5170295en_AU
local.contributor.authoruidLiu, Fangbing, u6554606en_AU
local.description.notesImported from ARIESen_AU
local.description.refereedYes
local.identifier.absfor461305 - Data structures and algorithmsen_AU
local.identifier.ariespublicationa383154xPUB11575en_AU
local.identifier.doi10.1109/ICDM.2019.00064en_AU
local.identifier.scopusID2-s2.0-85078892247
local.identifier.thomsonIDWOS:000555729900055
local.publisher.urlhttps://www.ieee.org/en_AU
local.type.statusPublished Versionen_AU

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