CurvFed: Curvature-Aligned Federated Learning for Fairness without Demographics
Harshit Sharma, Shaily Roy, and Asif Salekin

TL;DR
CurvFed introduces a fairness framework for federated learning that aligns loss landscape curvature without needing demographic data, ensuring equitable model performance across diverse bias factors.
Contribution
It proposes a novel, theoretically grounded method to promote fairness in federated learning without demographic information by regularizing loss landscape curvature via Fisher Information Matrix eigenvalues.
Findings
Effective fairness achieved without demographic data.
Validated on three real-world datasets and resource-constrained devices.
Maintains practical communication and resource efficiency.
Abstract
Modern human sensing applications often rely on data distributed across users and devices, where privacy concerns prevent centralized training. Federated Learning (FL) addresses this challenge by enabling collaborative model training without exposing raw data or attributes. However, achieving fairness in such settings remains difficult, as most human sensing datasets lack demographic labels, and FL's privacy guarantees limit the use of sensitive attributes. This paper introduces CurvFed: Curvature Aligned Federated Learning for Fairness without Demographics, a theoretically grounded framework that promotes fairness in FL without requiring any demographic or sensitive attribute information, a concept termed Fairness without Demographics (FWD), by optimizing the underlying loss landscape curvature. Building on the theory that equivalent loss landscape curvature corresponds to consistent…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Privacy-Preserving Technologies in Data · Ethics and Social Impacts of AI
