2011
DOI: 10.1007/978-3-642-21705-0_10
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Out-of-the-Box and Custom Implementation of Metaheuristics. A Case Study: The Vehicle Routing Problem with Stochastic Demand

Abstract: Abstract. Metaheuristics are a class of effective algorithms for optimization problems. A basic implementation of a metaheuristic typically requires rather little development effort. With a significantly larger investment in the design, implementation, and fine-tuning, metaheuristics can often produce state-of-the-art results. According to the amount of development effort, we say that an implementation of a metaheuristic is either an out-of-the-box version or a custom one. The possibility of implementing metah… Show more

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Cited by 4 publications
(5 citation statements)
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“…Authors [23] compare the performance of seven state-of-the-art algorithm configuration methods on different routing metaheuristics. Their findings confirm the results of [21] that the performance of the routing algorithm can be clearly improved by using parameter tuning. The results also reveal that there is no single best tuning method for routing algorithms, but that the Iterated F-Race algorithm seems to be the most robust one.…”
Section: Parameter Tuningsupporting
confidence: 85%
See 1 more Smart Citation
“…Authors [23] compare the performance of seven state-of-the-art algorithm configuration methods on different routing metaheuristics. Their findings confirm the results of [21] that the performance of the routing algorithm can be clearly improved by using parameter tuning. The results also reveal that there is no single best tuning method for routing algorithms, but that the Iterated F-Race algorithm seems to be the most robust one.…”
Section: Parameter Tuningsupporting
confidence: 85%
“…Parameter tuning is important because the value of the parameters may have a substantial impact on the efficacy of a heuristic algorithm [20]. Authors [21] compare the performance of five metaheuristics (tabu search, simulated annealing, genetic algorithm, iterated local search and ant colony optimization) with and without automated parameter tuning on a VRP with stochastic demands. The parameters from the non-tuned algorithms were randomly drawn within a given range, while the parameters from the tuned versions were obtained through an automatic configuration process based on the F-Race algorithm [22].…”
Section: Parameter Tuningmentioning
confidence: 99%
“…Rasku et al (2014) compare the performance of seven state-of-the-art algorithm configuration methods on different routing metaheuristics. Their findings confirm the results of Pellegrini and Birattari (2011) that the performance of the routing algorithm can be clearly improved by using parameter tuning. The results also reveal that there is no single best tuning method for routing algorithms, but that the Iterated F-Race algorithm seems to be the most robust.…”
Section: Parameter Tuningsupporting
confidence: 85%
“…Balaprakash et al ( 2007) describe applications of F-Race, Sampling F-Race and Iterative F-Race to three high-performance stochastic local search algorithms: MAX-MIN Ant System for the TSP with 6 parameters (Stützle and Hoos, 2000), an estimation-based local search algorithm for the probabilistic TSP (PTSP) with 3 parameters (Balaprakash et al, 2010), and a simulated annealing algorithm for vehicle routing with stochastic demands (VRP-SD) with 4 parameters (Pellegrini and Birattari, 2006). The empirical results from these case studies indicate that both, Sampling F-Race and Iterative F-Race can find good configurations in spaces that are too big be handled effectively by F-Race, and that Iterative F-Race tends to give better results than Sampling F-Race, especially when applied to more difficult configuration problems.…”
Section: Applicationsmentioning
confidence: 99%