International audienceThis paper aims at integrating machine learning techniques into meta-heuristics for solving combinatorial optimization problems. Specifically, our study develops a novel efficient iterated greedy algorithm based on reinforcement learning. The main novelty of the proposed algorithm is its new perturbation mechanism, which incorporates Q-learning to select appropriate perturbation operators during the search process. Through an application to the permutation flowshop scheduling problem, comprehensive computational experiments are conducted on a wide range of benchmark instances to evaluate the performance of the proposed algorithm. This evaluation is done against non-learning versions of the iterated greedy algorithm and...
Permutation flowshop scheduling problems (PFSPs) and, in particular, the variant with the objective ...
Many computational problems can be solved by multiple algorithms, with different algorithms fastest ...
Additive manufacturing – also known as 3D printing – is a manufacturing process that is attracting m...
International audienceThis paper aims at integrating machine learning techniques into meta-heuristic...
This thesis integrates machine learning techniques into meta-heuristics for solving combinatorial op...
International audienceIn this paper, we study the use of reinforcement learning in adaptive operator...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
This paper presents a multi-objective greedy randomized adaptive search procedure (GRASP)-based heur...
Metaheuristic algorithms offer unique opportunities in problem solving. Although they do not guarant...
Abstract- Research in combinatorial optimization initially focused on finding optimal solutions to v...
The permutation flowshop scheduling problem under a position-based learning effect is addressed in t...
WOS: 000431222700003The permutation flowshop scheduling problem under a position-based learning effe...
Hyper-heuristics are search algorithms which operate on a set of heuristics with the goal of solving...
There exist many problem-specific heuristic frameworks for solving combinatorial optimization proble...
We study combinatorial problems with real world applications such as machine scheduling, routing, an...
Permutation flowshop scheduling problems (PFSPs) and, in particular, the variant with the objective ...
Many computational problems can be solved by multiple algorithms, with different algorithms fastest ...
Additive manufacturing – also known as 3D printing – is a manufacturing process that is attracting m...
International audienceThis paper aims at integrating machine learning techniques into meta-heuristic...
This thesis integrates machine learning techniques into meta-heuristics for solving combinatorial op...
International audienceIn this paper, we study the use of reinforcement learning in adaptive operator...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
This paper presents a multi-objective greedy randomized adaptive search procedure (GRASP)-based heur...
Metaheuristic algorithms offer unique opportunities in problem solving. Although they do not guarant...
Abstract- Research in combinatorial optimization initially focused on finding optimal solutions to v...
The permutation flowshop scheduling problem under a position-based learning effect is addressed in t...
WOS: 000431222700003The permutation flowshop scheduling problem under a position-based learning effe...
Hyper-heuristics are search algorithms which operate on a set of heuristics with the goal of solving...
There exist many problem-specific heuristic frameworks for solving combinatorial optimization proble...
We study combinatorial problems with real world applications such as machine scheduling, routing, an...
Permutation flowshop scheduling problems (PFSPs) and, in particular, the variant with the objective ...
Many computational problems can be solved by multiple algorithms, with different algorithms fastest ...
Additive manufacturing – also known as 3D printing – is a manufacturing process that is attracting m...