The purpose of this work is that of presenting a version of the Reactive Tabu Search method (RTS) that is suitable for constrained problems, and that of testing RTS on a series of constrained and unconstrained Combinatorial Optimization tasks. The benchmark suite consists of many instances of the N-K model and of the Multiknapsack problem with various sizes and difficulties, defined with portable random number generators. The performance of RTS is compared with that of Repeated Local Minima Search, Simulated Annealing, Genetic Algorithms, and Neural Networks. In addition, the effects of different hashing schemes and of the presence of a simple "aspiration" criterion in the RTS algorithm are investigate
The training of neural networks is considered as a combinatorial optimization task and solved with t...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Abstract- In this paper the task of training subsymbolic systems is considered as a combinatorial op...
We propose an algorithm for combinatorial optimization where an explicit check for the repetition of...
In this paper the task of training sub-symbolic systems is considered as a combinatorial optimizatio...
We propose an algorithm for combinatorial optimization where an explicit check for the repetition of...
A novel algorithm for the global optimization of functions (C-RTS) is presented, in which a combinat...
A novel algorithm for the global optimisation of functions (C-RTS) is presented, in which a combinat...
Abstract: This paper puts forth a general method to effectively optimize constrained problems when u...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Reactive tabu search (RTS) is an improved method of tabu search (TS) and it dynamically adjusts tabu...
GRASP is a multi-start metaheuristic for combinatorial optimization problems, in which each iteratio...
The training of neural networks is considered as a combinatorial optimization task and solved with t...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Abstract- In this paper the task of training subsymbolic systems is considered as a combinatorial op...
We propose an algorithm for combinatorial optimization where an explicit check for the repetition of...
In this paper the task of training sub-symbolic systems is considered as a combinatorial optimizatio...
We propose an algorithm for combinatorial optimization where an explicit check for the repetition of...
A novel algorithm for the global optimization of functions (C-RTS) is presented, in which a combinat...
A novel algorithm for the global optimisation of functions (C-RTS) is presented, in which a combinat...
Abstract: This paper puts forth a general method to effectively optimize constrained problems when u...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Reactive tabu search (RTS) is an improved method of tabu search (TS) and it dynamically adjusts tabu...
GRASP is a multi-start metaheuristic for combinatorial optimization problems, in which each iteratio...
The training of neural networks is considered as a combinatorial optimization task and solved with t...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...