A novel feature-based approach to characterize algorithm performance for the traveling salesperson problem

Mersmann Olaf, Bischl Bernd,Trautmann Heike, Wagner Markus, Bossek Jakob, Neumann Frank

Abstract

Meta-heuristics are frequently used to tackle NP-hard combinatorial optimization problems. With this paper we contribute to the understanding of the success of 2-opt based local search algorithms for solving the traveling salesperson problem (TSP). Although 2-opt is widely used in practice, it is hard to understand its success from a theoretical perspective. We take a statistical approach and examine the features of TSP instances that make the problem either hard or easy to solve. As a measure of problem difficulty for 2-opt we use the approximation ratio that it achieves on a given instance. Our investigations point out important features that make TSP instances hard or easy to be approximated by 2-opt. © 2013 Springer Science+Business Media Dordrecht.

Cite as

Mersmann, O., Bischl, B., Trautmann, H., Wagner, M., Bossek, J., & Neumann, F. (2013). A novel feature-based approach to characterize algorithm performance for the traveling salesperson problem. Annals of Mathematics and Artificial Intelligence, 69(2), 182.

Details

Publication type
Research article (journal)

Peer reviewed
Yes

Publication status
Published

Year
2013

Journal
Annals of Mathematics and Artificial Intelligence

Volume
69

Issue
2

Start page
182

Language
English

ISSN
10122443

DOI