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Clustering with Label Consistency

Published: December 22, 2025 | arXiv ID: 2512.19654v1

By: Diptarka Chakraborty , Hendrik Fichtenberger , Bernhard Haeupler and more

Designing efficient, effective, and consistent metric clustering algorithms is a significant challenge attracting growing attention. Traditional approaches focus on the stability of cluster centers; unfortunately, this neglects the real-world need for stable point labels, i.e., stable assignments of points to named sets (clusters). In this paper, we address this gap by initiating the study of label-consistent metric clustering. We first introduce a new notion of consistency, measuring the label distance between two consecutive solutions. Then, armed with this new definition, we design new consistent approximation algorithms for the classical $k$-center and $k$-median problems.

Category
Computer Science:
Data Structures and Algorithms