FARF: A Fair and Adaptive Random Forests Classifier

dc.contributor.authorZhang, Wenbinen_NZ
dc.contributor.authorBifet, Alberten_NZ
dc.contributor.authorZhang, Xiangliangen_NZ
dc.contributor.authorWeiss, Jeremy C.en_NZ
dc.contributor.authorNejdl, Wolfgangen_NZ
dc.contributor.editorKarlapalem, Ken_NZ
dc.contributor.editorCheng, Hen_NZ
dc.contributor.editorRamakrishnan, Nen_NZ
dc.contributor.editorAgrawal, RKen_NZ
dc.contributor.editorReddy, PKen_NZ
dc.contributor.editorSrivastava, Jen_NZ
dc.contributor.editorChakraborty, Ten_NZ
dc.coverage.spatialVirtual Eventen_NZ
dc.date.accessioned2023-03-22T00:45:05Z
dc.date.available2023-03-22T00:45:05Z
dc.date.issued2021en_NZ
dc.description.abstractAs Artificial Intelligence (AI) is used in more applications, the need to consider and mitigate biases from the learned models has followed. Most works in developing fair learning algorithms focus on the offline setting. However, in many real-world applications data comes in an online fashion and needs to be processed on the fly. Moreover, in practical application, there is a trade-off between accuracy and fairness that needs to be accounted for, but current methods often have multiple hyper-parameters with non-trivial interaction to achieve fairness. In this paper, we propose a flexible ensemble algorithm for fair decision-making in the more challenging context of evolving online settings. This algorithm, called FARF (Fair and Adaptive Random Forests), is based on using online component classifiers and updating them according to the current distribution, that also accounts for fairness and a single hyper-parameters that alters fairness-accuracy balance. Experiments on real-world discriminated data streams demonstrate the utility of FARF.en_NZ
dc.format.mimetypeapplication/pdf
dc.identifier.doi10.1007/978-3-030-75765-6_20en_NZ
dc.identifier.eissn1611-3349en_NZ
dc.identifier.isbn9783030757649en_NZ
dc.identifier.issn0302-9743en_NZ
dc.identifier.urihttps://hdl.handle.net/10289/15629
dc.language.isoen
dc.publisherSpringeren_NZ
dc.relation.isPartOfAdvances in Knowledge Discovery and Data Mining. PAKDD 2021. Lecture Notes in Computer Scienceen_NZ
dc.rightsThis is an author’s accepted version of a conference paper published in Advances in Knowledge Discovery and Data Mining 25th Pacific-Asia Conference, PAKDD 2021 Virtual Event, May 11–14, 2021 Proceedings, Part II. © Springer Nature Switzerland AG 2021.
dc.sourcePAKDD 2021en_NZ
dc.subjectcomputer scienceen_NZ
dc.subjectartificial intelligenceen_NZ
dc.titleFARF: A Fair and Adaptive Random Forests Classifieren_NZ
dc.typeConference Contribution
dspace.entity.typePublication
pubs.begin-page245
pubs.end-page256
pubs.finish-date2021-05-14en_NZ
pubs.place-of-publicationChamen_NZ
pubs.publication-statusPublisheden_NZ
pubs.start-date2021-05-11en_NZ
pubs.volume12713en_NZ

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