Doubly Stochastic Mean-Shift Clustering
Abstract
Standard Mean-Shift algorithms are notoriously sensitive to the bandwidth hyperparameter, particularly in data-scarce regimes where fixed-scale density estimation leads to fragmentation and spurious modes. In this paper, we propose Doubly Stochastic Mean-Shift (DSMS), a novel extension that introduces randomness not only in the trajectory updates but also in the kernel bandwidth itself. By drawing both the data samples and the radius from a continuous uniform distribution at each iteration, DSMS effectively performs a better exploration of the density landscape. We show that this randomized bandwidth policy acts as an implicit regularization mechanism, and provide convergence theoretical results. Comparative experiments on synthetic Gaussian mixtures reveal that DSMS significantly outperforms standard and stochastic Mean-Shift baselines, exhibiting remarkable stability and preventing over-segmentation in sparse clustering scenarios without other performance degradation.
Cite
@article{arxiv.2602.15393,
title = {Doubly Stochastic Mean-Shift Clustering},
author = {Tom Trigano and Yann Sepulcre and Itshak Lapidot},
journal= {arXiv preprint arXiv:2602.15393},
year = {2026}
}
Comments
30 pages. arXiv admin note: text overlap with arXiv:2511.09202