Feb. 5, 2024, 6:42 a.m. | Aleksandar Armacki Dragana Bajovi\'c Du\v{s}an Jakoveti\'c Soummya Kar

cs.LG updates on arXiv.org arxiv.org

We develop a family of distributed clustering algorithms that work over networks of users. In the proposed scenario, users contain a local dataset and communicate only with their immediate neighbours, with the aim of finding a clustering of the full, joint data. The proposed family, termed Distributed Gradient Clustering (DGC-$\mathcal{F}_\rho$), is parametrized by $\rho \geq 1$, controling the proximity of users' center estimates, with $\mathcal{F}$ determining the clustering loss. Specialized to popular clustering losses like $K$-means and Huber loss, DGC-$\mathcal{F}_\rho$ …

aim algorithms clustering cs.dc cs.lg cs.ma data dataset distributed distributed data family framework gradient networks work

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