Simulated Annealing algorithm (SA) is a well-known probabilistic heuristic. It mimics the annealing process in metallurgy to approximate the global minimum of an optimization problem. The SA has many parameters which need to be tuned manually when applied to a specific problem. The tuning may be difficult and time-consuming. This paper aims to overcome this difficulty by using a self-tuning approach based on a machine learning algorithm called Hidden Markov Model (HMM). The main idea is allowing the SA to adapt his own cooling law at each iteration, according to the search history. An experiment was performed on many benchmark functions to show the efficiency of this approach compared to the classical one
All topics in this dissertation are centered around global optimization problems. The major part of ...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Simulated Annealing algorithm (SA) is a well-known probabilistic heuristic. It mimics the annealing ...
Simulated Annealing algorithm (SA) is a well-known probabilistic heuristic. It mimics the annealing ...
Monte Carlo methods have become popular for obtaining solutions to global optimization problems. One...
Simulated Annealing is a meta-heuristic that performs a randomized local search to reach near-optima...
Hidden Markov models are mixture models in which the populations from one observation to the next ar...
We propose a novel stochastic optimization algorithm, hybrid simulated annealing (SA), to train hidd...
Temperature is the control parameter of Simulated Annealing, one of the best-known local search opti...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
The runtime behavior of Simulated Annealing (SA), similar to other metaheuristics, is controlled by ...
Author name used in this publication: S. L. Ho2000-2001 > Academic research: refereed > Publication ...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
All topics in this dissertation are centered around global optimization problems. The major part of ...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
Simulated Annealing algorithm (SA) is a well-known probabilistic heuristic. It mimics the annealing ...
Simulated Annealing algorithm (SA) is a well-known probabilistic heuristic. It mimics the annealing ...
Monte Carlo methods have become popular for obtaining solutions to global optimization problems. One...
Simulated Annealing is a meta-heuristic that performs a randomized local search to reach near-optima...
Hidden Markov models are mixture models in which the populations from one observation to the next ar...
We propose a novel stochastic optimization algorithm, hybrid simulated annealing (SA), to train hidd...
Temperature is the control parameter of Simulated Annealing, one of the best-known local search opti...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
The runtime behavior of Simulated Annealing (SA), similar to other metaheuristics, is controlled by ...
Author name used in this publication: S. L. Ho2000-2001 > Academic research: refereed > Publication ...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...
All topics in this dissertation are centered around global optimization problems. The major part of ...
This book presents state of the art contributes to Simulated Annealing (SA) that is a well-known pro...
Simulated annealing is a combinatorial optimization method based on randomization techniques. The me...