Metrical Service Systems with Multiple Servers
Ashish Chiplunkar, Sundar Vishwanathan

TL;DR
This paper investigates the metrical service systems with multiple servers, providing improved bounds for deterministic and randomized algorithms, and introduces new approximation algorithms and hardness results for the problem.
Contribution
It advances the understanding of MSSMS by improving competitive ratio bounds, proposing a pseudo-approximation algorithm, and establishing hardness results for general metric spaces.
Findings
Deterministic algorithm achieves a competitive ratio of $k({{k+l}\choose{l}}-1)$.
A randomized algorithm attains an $ ext{O}(k^3\log l)$ competitive ratio on uniform metrics.
A lower bound of $\Omega(\log kl)$ for randomized algorithms on uniform metrics.
Abstract
We study the problem of metrical service systems with multiple servers (MSSMS), which generalizes two well-known problems -- the -server problem, and metrical service systems. The MSSMS problem is to service requests, each of which is an -point subset of a metric space, using servers, with the objective of minimizing the total distance traveled by the servers. Feuerstein initiated a study of this problem by proving upper and lower bounds on the deterministic competitive ratio for uniform metric spaces. We improve Feuerstein's analysis of the upper bound and prove that his algorithm achieves a competitive ratio of . In the randomized online setting, for uniform metric spaces, we give an algorithm which achieves a competitive ratio , beating the deterministic lower bound of . We prove that any randomized…
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Taxonomy
TopicsOptimization and Search Problems · Complexity and Algorithms in Graphs · Facility Location and Emergency Management
