Stochastic learning automata and genetic algorithms (GAs) have previously been shown to have valuable global optimization properties. Learning automata have, however, been criticized for having a relatively slow rate of convergence. In this paper, these two techniques are combined to provide an increase in the rate of convergence for the learning automata and also to improve the chances of escaping local optima. The technique separates the genotype and phenotype properties of the GA and has the advantage that the degree of convergence can be quickly ascertained. It also provides the GA with a stopping rule. If the technique is applied to real-valued function optimization problems, then bounds on the range of the values within which the glob...
Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increa...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using method s from statistical ...
Both stochastic learning automata and genetic algorithms have previously been shown to have valuable...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
The genetic algorithms (GAs) can be used as a global optimization tool for continuous and discrete f...
Weak convergence methods are used to analyse generalized learning automata algorithms. The REINFORCE...
Genetic algorithms (GAs) are stochastic search algorithms inspired by the basic principles of biolog...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
Genetic algorithms (GAs) are biologically motivated adaptive systems which have been used, with vary...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using methods from statistical m...
Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increa...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using method s from statistical ...
Both stochastic learning automata and genetic algorithms have previously been shown to have valuable...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
The genetic algorithms (GAs) can be used as a global optimization tool for continuous and discrete f...
Weak convergence methods are used to analyse generalized learning automata algorithms. The REINFORCE...
Genetic algorithms (GAs) are stochastic search algorithms inspired by the basic principles of biolog...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
Genetic algorithms (GAs) are biologically motivated adaptive systems which have been used, with vary...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using methods from statistical m...
Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increa...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using method s from statistical ...