Ordered $k$-Median with Outliers and Fault-Tolerance
Shichuan Deng, Qianfan Zhang

TL;DR
This paper introduces robust and fault-tolerant variants of ordered $k$-median, providing the first constant-factor approximation algorithms for these problems and related generalizations, using innovative LP relaxations and analysis techniques.
Contribution
It develops the first constant-approximation algorithms for robust and fault-tolerant ordered $k$-median, extending to ordered matroid and knapsack median, with novel LP relaxations and analysis methods.
Findings
Achieved constant-factor approximation for robust ordered $k$-median.
Developed a new LP relaxation with sparsification for fault-tolerant ordered $k$-median.
Extended techniques to ordered matroid and knapsack median problems.
Abstract
In this paper, we study two natural generalizations of ordered -median, named robust ordered -median and fault-tolerant ordered -median. In ordered -median, given a finite metric space , we seek to open facilities which induce a service cost vector , and minimize the ordered objective . Here is the minimum distance between and facilities in , is a given non-increasing non-negative vector, and is the non-increasingly sorted version of . The current best result is a -approximation [CS19]. We first consider robust ordered -median, a.k.a. ordered -median with outliers, where the input consists of an ordered -median instance and parameter . The goal is to open …
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Taxonomy
TopicsFacility Location and Emergency Management · Computational Geometry and Mesh Generation · Optimization and Search Problems
