In this paper we compare the performance of the Barter method, a newly introduced population-based (stochastic) heuristic to search the global optimum of a (continuous) multi-modal function, with that of two other well-established and very powerful methods, namely, the Simulated Annealing (SA) and the Differential Evolution (DE) methods of global optimization. In all, 87 benchmark functions have been optimized 89 times. The DE succeeds in 82 cases, the Barter succeeds in 63 cases, while the Simulated Annealing method succeeds for a modest number of 51 cases. The DE as well as Barter methods are unstable for stochastic functions (Yao-Liu#7 and Fletcher-Powell functions). In particular, Bukin-6, Perm-2 and Mishra-2 functions have been har...
This paper aims at comparing the performance of the Differential Evolution (DE) and the Repulsive Pa...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
In this paper we compare the performance of the Barter method, a newly introduced population-based (...
The objective of this paper is to introduce a new population-based (stochastic) heuristic to search ...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Simulated annealing is a global optimization method that distinguishes between different local optim...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
AbstractThe performance of simulated annealing methods for finding a global minimum point of a funct...
We introduce four new general optimization algorithms based on the 'demon' algorithm from statistica...
Stochastic methods for global optimization problems with continuous variables have been studied. Mod...
Simulated annealing is a widely used algorithm for the computation of global optimization problems i...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
This paper aims at comparing the performance of the Differential Evolution (DE) and the Repulsive Pa...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
In this paper we compare the performance of the Barter method, a newly introduced population-based (...
The objective of this paper is to introduce a new population-based (stochastic) heuristic to search ...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Simulated annealing is a global optimization method that distinguishes between different local optim...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
AbstractThe performance of simulated annealing methods for finding a global minimum point of a funct...
We introduce four new general optimization algorithms based on the 'demon' algorithm from statistica...
Stochastic methods for global optimization problems with continuous variables have been studied. Mod...
Simulated annealing is a widely used algorithm for the computation of global optimization problems i...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
This paper aims at comparing the performance of the Differential Evolution (DE) and the Repulsive Pa...
Abstract. Global optimization involves the difficult task of the identification of global extremitie...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...