2007
DOI: 10.1007/s10479-007-0233-x
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A robust and efficient algorithm for planar competitive location problems

Abstract: In this paper we empirically analyze several algorithms for solving a Huff-like competitive location and design model for profit maximization in the plane. In particular, an exact interval branch-and-bound method and a multistart heuristic already proposed in the literature are compared with UEGO (Universal Evolutionary Global Optimizer), a recent evolutionary algorithm. Both the multistart heuristic and UEGO use a Weiszfeld-like algorithm as local search procedure. The computational study shows that UEGO is s… Show more

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Cited by 24 publications
(35 citation statements)
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“…Four parallelization of UEGO have been presented. Redondo et al (2009a) empirically analyzed several algorithms for solving the same model. In particular, an exact interval branch-and-bound method and a multi-start heuristic was compared with UEGO.…”
Section: Fernandez Et Al (2007b) Developed Two Solution Methods For mentioning
confidence: 99%
“…Four parallelization of UEGO have been presented. Redondo et al (2009a) empirically analyzed several algorithms for solving the same model. In particular, an exact interval branch-and-bound method and a multi-start heuristic was compared with UEGO.…”
Section: Fernandez Et Al (2007b) Developed Two Solution Methods For mentioning
confidence: 99%
“…This algorithm is a meta-heuristic global optimization method [34][35][36] based on a hybridization between a genetic algorithm (GA) 37 (which approximates the solution of (8)) with a multi-layer secant algorithm (MSA) 38,39 (which provides suitable initial populations for the GA). In the following, both GA and MSA methods are described in more details.…”
Section: Appendix: Optimization Algorithmmentioning
confidence: 99%
“…A local method is proposed in [13] (see also [26]) for solving the follower problem. The algorithm is a steepest descent type method which takes discrete steps along the search directions and, usually, converges to a local optimum.…”
Section: Wlm: a Weiszfeld-like Algorithmmentioning
confidence: 99%
“…Next, we present another heuristic procedure, UEGO, introduced in [26], which is rather robust, in the sense that it usually finds the global optimum. Furthermore, its running times are competitive, for small to medium size problems, with the multistart technique starting from 1000 points, and it can handle big size problems without any difficulties.…”
Section: Wlm: a Weiszfeld-like Algorithmmentioning
confidence: 99%
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