Very Large-Scale Neighborhood Search for the Quadratic Assignment Problem

MIT Sloan School of Management Working Paper No. 4386-02

28 Pages Posted: 3 Nov 2002

See all articles by Ravindra K. Ahuja

Ravindra K. Ahuja

University of Florida - Department of Industrial and Systems Engineering

Krishna Jha

University of Florida - Department of Industrial and Systems Engineering

James B. Orlin

Massachusetts Institute of Technology (MIT) - Sloan School of Management

Dushyant Sharma

University of Michigan at Ann Arbor - Department of Industrial and Operations Engineering

Date Written: July 2002

Abstract

The Quadratic Assignment Problem (QAP) consists of assigning n facilities to n locations so as to minimize the total weighted cost of interactions between facilities. The QAP arises in many diverse settings, is known to be NP-hard, and can be solved to optimality only for fairly small size instances (typically, n is less than or equal to 25). Neighborhood search algorithms are the most popular heuristic algorithms to solve larger size instances of the QAP. The most extensively used neighborhood structure for the QAP is the 2-exchange neighborhood. This neighborhood is obtained by swapping the locations of two facilities and thus has size O(n^2). Previous efforts to explore larger size neighborhoods (such as 3-exchange or 4-exchange neighborhoods) were not very successful, as it took too long to evaluate the larger set of neighbors. In this paper, we propose very large-scale neighborhood (VLSN) search algorithms where the size of the neighborhood is very large and we propose a novel search procedure to heuristically enumerate good neighbors. Our search procedure relies on the concept of improvement graph which allows us to evaluate neighbors much faster than the existing methods. We present extensive computational results of our algorithms on standard benchmark instances. These investigations reveal that very large-scale neighborhood search algorithms give consistently better solutions compared the popular 2-exchange neighborhood algorithms considering both the solution time and solution accuracy.

Keywords: Quadratic Assignment Problem, QAP, Very Large-Scale Neighborhood, VLSN

Suggested Citation

Ahuja, Ravindra K. and Jha, Krishna and Orlin, James B. and Sharma, Dushyant, Very Large-Scale Neighborhood Search for the Quadratic Assignment Problem (July 2002). MIT Sloan School of Management Working Paper No. 4386-02, Available at SSRN: https://ssrn.com/abstract=337600 or http://dx.doi.org/10.2139/ssrn.337600

Ravindra K. Ahuja

University of Florida - Department of Industrial and Systems Engineering ( email )

303 Weil Hall
Gainesville, FL 32611-6595
United States

Krishna Jha

University of Florida - Department of Industrial and Systems Engineering ( email )

303 Weil Hall
Gainesville, FL 32611-6595
United States

James B. Orlin (Contact Author)

Massachusetts Institute of Technology (MIT) - Sloan School of Management ( email )

E53-357
Cambridge, MA 02142
United States
617-253-6606 (Phone)
617-258-7579 (Fax)

Dushyant Sharma

University of Michigan at Ann Arbor - Department of Industrial and Operations Engineering ( email )

1205 Beal Avenue
Ann Arbor, MI 48109
United States

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