Mitigating Group Bias in Federated Learning for Heterogeneous Devices
Khotso Selialia, Yasra Chandio, Fatima M. Anwar

TL;DR
This paper introduces a group-fair federated learning framework that reduces bias across diverse devices and data domains, ensuring fairer decision-making without extra resource costs.
Contribution
It proposes a novel method leveraging importance weights and regularization to mitigate group bias in heterogeneous federated learning environments.
Findings
Effective bias reduction in emotion recognition and image classification tasks.
Maintains privacy and resource efficiency during bias mitigation.
Balances fairness and performance across groups.
Abstract
Federated Learning is emerging as a privacy-preserving model training approach in distributed edge applications. As such, most edge deployments are heterogeneous in nature i.e., their sensing capabilities and environments vary across deployments. This edge heterogeneity violates the independence and identical distribution (IID) property of local data across clients and produces biased global models i.e. models that contribute to unfair decision-making and discrimination against a particular community or a group. Existing bias mitigation techniques only focus on bias generated from label heterogeneity in non-IID data without accounting for domain variations due to feature heterogeneity and do not address global group-fairness property. Our work proposes a group-fair FL framework that minimizes group-bias while preserving privacy and without resource utilization overhead. Our main idea…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Ethics and Social Impacts of AI
MethodsFocus
