FAC-fed: Federated adaptation for fairness and concept drift aware stream classification
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Published:2023-07-26
Issue:8
Volume:112
Page:2761-2786
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ISSN:0885-6125
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Container-title:Machine Learning
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language:en
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Short-container-title:Mach Learn
Author:
Badar MaryamORCID, Nejdl Wolfgang, Fisichella Marco
Abstract
AbstractFederated learning is an emerging collaborative learning paradigm of Machine learning involving distributed and heterogeneous clients. Enormous collections of continuously arriving heterogeneous data residing on distributed clients require federated adaptation of efficient mining algorithms to enable fair and high-quality predictions with privacy guarantees and minimal response delay. In this context, we propose a federated adaptation that mitigates discrimination embedded in the streaming data while handling concept drifts (FAC-Fed). We present a novel adaptive data augmentation method that mitigates client-side discrimination embedded in the data during optimization, resulting in an optimized and fair centralized server. Extensive experiments on a set of publicly available streaming and static datasets confirm the effectiveness of the proposed method. To the best of our knowledge, this work is the first attempt towards fairness-aware federated adaptation for stream classification, therefore, to prove the superiority of our proposed method over state-of-the-art, we compare the centralized version of our proposed method with three centralized stream classification baseline models (FABBOO, FAHT, CSMOTE). The experimental results show that our method outperforms the current methods in terms of both discrimination mitigation and predictive performance.
Funder
Niedersächsische Ministerium für Wissenschaft und Kultur Gottfried Wilhelm Leibniz Universität Hannover
Publisher
Springer Science and Business Media LLC
Subject
Artificial Intelligence,Software
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Cited by
2 articles.
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