2018
DOI: 10.1080/01605682.2018.1494527
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Enhancing and extending the classical GRASP framework with biased randomisation and simulation

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Cited by 56 publications
(37 citation statements)
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“…() and Ferone et al. () extend two popular metaheuristic frameworks into simheuristic ones, so they can also deal with stochastic optimization problems in a natural way.…”
Section: Literature Reviewmentioning
confidence: 99%
“…() and Ferone et al. () extend two popular metaheuristic frameworks into simheuristic ones, so they can also deal with stochastic optimization problems in a natural way.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Hence, multiple executions of a BRA-either completed in a sequential or in a parallel mode-will yield a set of alternative solutions, all of them based on the logic behind the heuristic. Since we are executing many biased-random variations of the constructive procedure defined by the heuristic, chances are that some of these "near-greedy" heuristics lead to solutions that outperform the one generated by the greedy heuristic [10]. Algorithm 1 shows a pseudo-code description of a basic BRA that performs in a sequential way.…”
Section: Basic Concepts On Biased-randomized Algorithmsmentioning
confidence: 99%
“…Notice that, by using this approach, a broad exploration of the solution space is carried out, which might be specially beneficial in the case of highly irregular objective functions as the ones characterizing non-smooth OPs. The proposed methodology can be seen as a natural extension of the basic greedy randomized adaptive search procedure (GRASP) [44], as analyzed in Ferone et al [10]. Instead of employing empirical probability distributions-which require time-consuming parameter fine tuning and thus might slow down computations-a theoretical probability distribution such as the geometric distribution or the decreasing triangular distribution can be used.…”
Section: Basic Concepts On Biased-randomized Algorithmsmentioning
confidence: 99%
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“…Our solving approach relies on a simheuristic algorithm, which combines heuristic or metaheuristic algorithms with simulation (in any of its forms). These hybridization has been used to extend metaheuristic frameworks such as the greedy randomized adaptive search procedure (Ferone et al 2018) or the iterated local search (Grasas et al 2016). As any other simheuristic algorithm, the developed model in this study is composed of two different components: an optimization module which searches for promising solutions and a simulation model which assesses the promising solutions in a stochastic environment and might also guide the search process.…”
Section: Overview Of Our Simheuristic Approachmentioning
confidence: 99%