AbstractWe consider a parallel simulated annealing algorithm that is closely related to the so-called parallel chain algorithm. Periodically a new state from p∈N1 states is chosen as the initial state for p simulated annealing Markov chains running independent of each other. We use selection strategies such as best-wins or worst-wins and show that the algorithm in the case of best-wins does not in general converge to the set of global minima. Indeed the period length and the number p have to be large enough. In the case of worst-wins the convergence result is true. The phenomenon of the superiority of worst-wins over best-wins already occurs in finite-time simulations
Simulated Annealing is a family of randomized algorithms used to solve many combinatorial optimizati...
Simulated annealing is a probabilistic algorithm for minimizing a general cost function which may ha...
Simulated annealing is an attractive, but expensive, heuristic for approximating the solution to com...
AbstractWe consider a parallel simulated annealing algorithm that is closely related to the so-calle...
Simulated annealing is a probabilistic optimization algorithm which is used for approximating the gl...
Simulated Annealing has proven to be a very sucessful heuristic for various combinatorial optimizati...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
The Metropolis algorithm is simulated annealing with a fixed temperature. Surprisingly enough, many ...
"August 20, 1985."Bibliography: p. 32."U.S. Army Res. Off. ... Grant DAAG29-84-K-0005" "Air Force Of...
A common approach to parallelizing simulated annealing to generate several perturbations to the cur...
The Simulated Annealing algorithm is a probabilistic search technique for finding the minimum cost s...
Rigorous proofs of the convergence of the simulated annealing process in the original formulation ha...
We establish asymptotic convergence of the standard simulated annealing algorithm - when used with a...
Simulated annealing is a popular method for approaching the solution of a global optimization proble...
Simulated annealing is a popular and much studied method for maximizing functions on finite or compa...
Simulated Annealing is a family of randomized algorithms used to solve many combinatorial optimizati...
Simulated annealing is a probabilistic algorithm for minimizing a general cost function which may ha...
Simulated annealing is an attractive, but expensive, heuristic for approximating the solution to com...
AbstractWe consider a parallel simulated annealing algorithm that is closely related to the so-calle...
Simulated annealing is a probabilistic optimization algorithm which is used for approximating the gl...
Simulated Annealing has proven to be a very sucessful heuristic for various combinatorial optimizati...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
The Metropolis algorithm is simulated annealing with a fixed temperature. Surprisingly enough, many ...
"August 20, 1985."Bibliography: p. 32."U.S. Army Res. Off. ... Grant DAAG29-84-K-0005" "Air Force Of...
A common approach to parallelizing simulated annealing to generate several perturbations to the cur...
The Simulated Annealing algorithm is a probabilistic search technique for finding the minimum cost s...
Rigorous proofs of the convergence of the simulated annealing process in the original formulation ha...
We establish asymptotic convergence of the standard simulated annealing algorithm - when used with a...
Simulated annealing is a popular method for approaching the solution of a global optimization proble...
Simulated annealing is a popular and much studied method for maximizing functions on finite or compa...
Simulated Annealing is a family of randomized algorithms used to solve many combinatorial optimizati...
Simulated annealing is a probabilistic algorithm for minimizing a general cost function which may ha...
Simulated annealing is an attractive, but expensive, heuristic for approximating the solution to com...