Skip to main content
Article
Clustering of Search Trajectory and its Application to Parameter Tuning
Journal of the Operational Research Society
  • Linda Lindawati, Singapore Management University
  • Hoong Chuin LAU, Singapore Management University
  • David LO, Singapore Management University
Publication Type
Journal Article
Version
publishedVersion
Publication Date
1-2013
Abstract

This paper is concerned with automated classification of Combinatorial Optimization Problem instances for instance-specific parameter tuning purpose. We propose the CluPaTra Framework, a generic approach to CLUster instances based on similar PAtterns according to search TRAjectories and apply it on parameter tuning. The key idea is to use the search trajectory as a generic feature for clustering problem instances. The advantage of using search trajectory is that it can be obtained from any local-search based algorithm with small additional computation time. We explore and compare two different search trajectory representations, two sequence alignment techniques (to calculate similarities) as well as two well-known clustering methods. We report experiment results on two classical problems: Travelling Salesman Problem and Quadratic Assignment Problem and industrial case study.

Keywords
  • generic feature,
  • search trajectory,
  • instance-based automated parameter tuning,
  • sequence alignment,
  • local search algorithm
Identifier
10.1057/jors.2012.167
Publisher
Palgrave Macmillan
Creative Commons License
Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International
Additional URL
http://dx.doi.org/10.1057/jors.2012.167
Citation Information
Linda Lindawati, Hoong Chuin LAU and David LO. "Clustering of Search Trajectory and its Application to Parameter Tuning" Journal of the Operational Research Society Vol. 64 Iss. 12 (2013) p. 1742 - 1752 ISSN: 0160-5682
Available at: http://works.bepress.com/david_lo/139/