Dimension-Free Parameterized Approximation Schemes for Hybrid Clustering
Ameet Gadekar, Tanmay Inamdar

TL;DR
This paper introduces a dimension-free, fixed-parameter tractable approximation scheme for hybrid k-clustering that extends to various metric spaces and variants, significantly improving computational efficiency over previous methods.
Contribution
It presents the first FPT approximation algorithm for hybrid k-clustering that removes exponential dependence on dimension, extending to multiple metric spaces and clustering variants.
Findings
Achieves bicriteria approximation with FPT runtime in k and ε
Extends to doubling, minor-free, and bounded treewidth metric spaces
Provides a coreset construction for hybrid k-clustering in doubling spaces
Abstract
Hybrid -Clustering is a model of clustering that generalizes two of the most widely studied clustering objectives: -Center and -Median. In this model, given a set of points , the goal is to find centers such that the sum of the -distances of each point to its nearest center is minimized. The -distance between two points and is defined as -- this represents the distance of to the boundary of the -radius ball around if is outside the ball, and otherwise. This problem was recently introduced by Fomin et al. [APPROX 2024], who designed a -bicrtieria approximation that runs in time for inputs in ; such a bicriteria solution uses balls of radius instead of , and has a cost at most times the…
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