Algorithms based on statistical models compete favorably with other global optimization algorithms as proved by extensive testing results. Recently, techniques were developed for theoretically estimating the rate of convergence of global optimization algorithms with respect to the underlying statistical models. In the present paper these technictues are extended for theoretical investigation of P-algorithms without respect to a statistical model. Theoretical estimates may eliminate the need for lengthy experimental investigation which previously was the only method for comparison of the algorithms. The rcaults obtained give new insight into the role of the mnderlying statistical model with respect to the asymptotic properties of the algorit...
In this paper we propose a modified version of the simulated annealing algorithm for solving a stoch...
Population search algorithms for optimization problems such as Genetic algorithm is an effective way...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
AbstractA statistical model for global optimization is constructed generalizing some properties of t...
We present global convergence rates for a line-search method which is based on random first-order mo...
The global optimization of a mathematical model determines the best parameters such that a target or...
The global optimization of a mathematical model determines the best parameters such that a target or...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
We investigate the global convergence of estimation of distribution algorithms (EDAs). In EDAs, the ...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
Statistical models of multimodal functions, Global optimization, Simplicial partition, 90C26,
This discussion paper for the SGO 2001 Workshop considers the process of investigating stochastic gl...
This paper presents a study based on the empirical results of the average first hitting time of Esti...
AbstractPassive algorithms for global optimization of a function choose observation points independe...
Controlled Random Search (CRS) is a simple population based algorithm which despite its attractivene...
In this paper we propose a modified version of the simulated annealing algorithm for solving a stoch...
Population search algorithms for optimization problems such as Genetic algorithm is an effective way...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
AbstractA statistical model for global optimization is constructed generalizing some properties of t...
We present global convergence rates for a line-search method which is based on random first-order mo...
The global optimization of a mathematical model determines the best parameters such that a target or...
The global optimization of a mathematical model determines the best parameters such that a target or...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
We investigate the global convergence of estimation of distribution algorithms (EDAs). In EDAs, the ...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
Statistical models of multimodal functions, Global optimization, Simplicial partition, 90C26,
This discussion paper for the SGO 2001 Workshop considers the process of investigating stochastic gl...
This paper presents a study based on the empirical results of the average first hitting time of Esti...
AbstractPassive algorithms for global optimization of a function choose observation points independe...
Controlled Random Search (CRS) is a simple population based algorithm which despite its attractivene...
In this paper we propose a modified version of the simulated annealing algorithm for solving a stoch...
Population search algorithms for optimization problems such as Genetic algorithm is an effective way...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...