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arxiv: 1901.08668 · v2 · pith:O7756PYRnew · submitted 2019-01-24 · 📊 stat.ML · cs.DS· cs.LG

Guarantees for Spectral Clustering with Fairness Constraints

classification 📊 stat.ML cs.DScs.LG
keywords clusteringfairalgorithmsconstraineddatafairnessnaturalnotion
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Given the widespread popularity of spectral clustering (SC) for partitioning graph data, we study a version of constrained SC in which we try to incorporate the fairness notion proposed by Chierichetti et al. (2017). According to this notion, a clustering is fair if every demographic group is approximately proportionally represented in each cluster. To this end, we develop variants of both normalized and unnormalized constrained SC and show that they help find fairer clusterings on both synthetic and real data. We also provide a rigorous theoretical analysis of our algorithms on a natural variant of the stochastic block model, where $h$ groups have strong inter-group connectivity, but also exhibit a "natural" clustering structure which is fair. We prove that our algorithms can recover this fair clustering with high probability.

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  1. Alternatives to the Laplacian for Scalable Spectral Clustering with Group Fairness Constraints

    cs.LG 2025-10 unverdicted novelty 4.0

    Fair-SMW uses SMW identity and alternative Laplacians to produce group-fair spectral clustering that is twice as fast and twice as balanced as prior methods on SBM and real network data.