Topological Federated Clustering via Gravitational Potential Fields under Local Differential Privacy
Yunbo Long, Jiaquan Zhang, Xi Chen, Alexandra Brintrup

TL;DR
This paper introduces GFC, a novel federated clustering method that uses topological analysis of gravitational potential fields to accurately cluster non-IID data under local differential privacy without iterative communication.
Contribution
GFC transforms privatized client data into a topological potential field, enabling stable clustering under strong privacy constraints with theoretical guarantees and superior empirical performance.
Findings
Outperforms state-of-the-art methods on ten benchmarks.
Maintains high accuracy under strong privacy budgets ($ < 1$).
Provides a theoretical bound linking privacy budget and centroid error.
Abstract
Clustering non-independent and identically distributed (non-IID) data under local differential privacy (LDP) in federated settings presents a critical challenge: preserving privacy while maintaining accuracy without iterative communication. Existing one-shot methods rely on unstable pairwise centroid distances or neighborhood rankings, degrading severely under strong LDP noise and data heterogeneity. We present Gravitational Federated Clustering (GFC), a novel approach to privacy-preserving federated clustering that overcomes the limitations of distance-based methods under varying LDP. Addressing the critical challenge of clustering non-IID data with diverse privacy guarantees, GFC transforms privatized client centroids into a global gravitational potential field where true cluster centers emerge as topologically persistent singularities. Our framework introduces two key innovations:…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Privacy-Preserving Technologies in Data · Advanced Graph Neural Networks
