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Enhancing Long Term Fairness in Recommendations with Variational Autoencoders
Authors
Bennett James
Ge Xiaoyu
Stefanidis Kostas
Yao Sirui
Publication date
27 January 2020
Publisher
'Association for Computing Machinery (ACM)'
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Abstract is not available.
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Last time updated on 10/08/2021
TamPub Julkaisuarkisto - TamPub Institutional Repository
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oai:trepo.tuni.fi:10024/119659
Last time updated on 01/04/2020
Trepo - Institutional Repository of Tampere University
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oai:trepo.tuni.fi:10024/119659
Last time updated on 25/03/2020