Improvements on the k-center problem for uncertain data
Sharareh Alipour, Amir Jafari

TL;DR
This paper presents improved approximation algorithms for the k-center problem with uncertain data, providing efficient solutions that outperform previous methods in Euclidean and general metric spaces.
Contribution
The paper introduces new constant-factor approximation algorithms for the uncertain k-center problem, extending and improving upon prior work in Euclidean and metric spaces.
Findings
Achieved better approximation ratios than previous algorithms.
Algorithms are efficient and easy to implement.
Results apply to both Euclidean and general metric spaces.
Abstract
In real applications, there are situations where we need to model some problems based on uncertain data. This leads us to define an uncertain model for some classical geometric optimization problems and propose algorithms to solve them. In this paper, we study the -center problem, for uncertain input. In our setting, each uncertain point is located independently from other points in one of several possible locations in a metric space with metric , with specified probabilities and the goal is to compute -centers that minimize the following expected cost here is the probability space of all realizations of given uncertain points and $$prob(R)=\prod_{i=1}^n…
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