Approximation Algorithms for Continuous Clustering and Facility Location Problems
June 30, 2022 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Deeparnab Chakrabarty, Maryam Negahbani, Ankita Sarkar
arXiv ID
2206.15105
Category
cs.DS: Data Structures & Algorithms
Citations
7
Venue
Embedded Systems and Applications
Last Checked
4 months ago
Abstract
We consider the approximability of center-based clustering problems where the points to be clustered lie in a metric space, and no candidate centers are specified. We call such problems "continuous", to distinguish from "discrete" clustering where candidate centers are specified. For many objectives, one can reduce the continuous case to the discrete case, and use an $Ξ±$-approximation algorithm for the discrete case to get a $Ξ²Ξ±$-approximation for the continuous case, where $Ξ²$ depends on the objective: e.g. for $k$-median, $Ξ²= 2$, and for $k$-means, $Ξ²= 4$. Our motivating question is whether this gap of $Ξ²$ is inherent, or are there better algorithms for continuous clustering than simply reducing to the discrete case? In a recent SODA 2021 paper, Cohen-Addad, Karthik, and Lee prove a factor-$2$ and a factor-$4$ hardness, respectively, for continuous $k$-median and $k$-means, even when the number of centers $k$ is a constant. The discrete case for a constant $k$ is exactly solvable in polytime, so the $Ξ²$ loss seems unavoidable in some regimes. In this paper, we approach continuous clustering via the round-or-cut framework. For four continuous clustering problems, we outperform the reduction to the discrete case. Notably, for the problem $Ξ»$-UFL, where $Ξ²= 2$ and the discrete case has a hardness of $1.27$, we obtain an approximation ratio of $2.32 < 2 \times 1.27$ for the continuous case. Also, for continuous $k$-means, where the best known approximation ratio for the discrete case is $9$, we obtain an approximation ratio of $32 < 4 \times 9$. The key challenge is that most algorithms for discrete clustering, including the state of the art, depend on linear programs that become infinite-sized in the continuous case. To overcome this, we design new linear programs for the continuous case which are amenable to the round-or-cut framework.
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