A Path Relinking Approach for the Multi-Resource Generalized Quadratic Assignment Problem

Author(s):  
Mutsunori Yagiura ◽  
Akira Komiya ◽  
Kenya Kojima ◽  
Koji Nonobe ◽  
Hiroshi Nagamochi ◽  
...  
2006 ◽  
Vol 18 (4) ◽  
pp. 433-443 ◽  
Author(s):  
Jean-François Cordeau ◽  
Manlio Gaudioso ◽  
Gilbert Laporte ◽  
Luigi Moccia

Author(s):  
Tabitha James ◽  
Cesar Rego

This paper introduces a new path relinking algorithm for the well-known quadratic assignment problem (QAP) in combinatorial optimization. The QAP has attracted considerable attention in research because of its complexity and its applicability to many domains. The algorithm presented in this study employs path relinking as a solution combination method incorporating a multistart tabu search algorithm as an improvement method. The resulting algorithm has interesting similarities and contrasts with particle swarm optimization methods. Computational testing indicates that this algorithm produces results that rival the best QAP algorithms. The authors additionally conduct an analysis disclosing how different strategies prove more or less effective depending on the landscapes of the problems to which they are applied. This analysis lays a foundation for developing more effective future QAP algorithms, both for methods based on path relinking and tabu search, and for hybrids of such methods with related processes found in particle swarm optimization.


2011 ◽  
Vol 2 (2) ◽  
pp. 52-70
Author(s):  
Tabitha James ◽  
Cesar Rego

This paper introduces a new path relinking algorithm for the well-known quadratic assignment problem (QAP) in combinatorial optimization. The QAP has attracted considerable attention in research because of its complexity and its applicability to many domains. The algorithm presented in this study employs path relinking as a solution combination method incorporating a multistart tabu search algorithm as an improvement method. The resulting algorithm has interesting similarities and contrasts with particle swarm optimization methods. Computational testing indicates that this algorithm produces results that rival the best QAP algorithms. The authors additionally conduct an analysis disclosing how different strategies prove more or less effective depending on the landscapes of the problems to which they are applied. This analysis lays a foundation for developing more effective future QAP algorithms, both for methods based on path relinking and tabu search, and for hybrids of such methods with related processes found in particle swarm optimization.


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