In this paper, we propose a simple global optimisation algorithm inspired by Pareto’s principle. This algorithm samples most of its solutions within prominent search domains and is equipped with a self-adaptive mechanism to control the dynamic tightening of the prominent domains while the greediness of the algorithm increases over time (iterations). Unlike traditional metaheuristics, the proposed method has no direct mutation- or crossover-like operations. It depends solely on the sequential random sampling that can be used in diversification and intensification processes while keeping the information-flow between generations and the structural bias at a minimum. By using a simple topology, the algorithm avoids premature convergence by samp...
A direct stochastic algorithm for global search This paper presents a new algorithm called PGSL- Pro...
A novel algorithm for the global optimization of functions (C-RTS) is presented, in which a combinat...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
This repository holds the source code for the new optimization algorithm Pareto-like Sequential Samp...
Abstract In this research, a new method for population initialisation in meta‐heuristic algorithms b...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
A novel algorithm for the global optimisation of functions (C-RTS) is presented, in which a combinat...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
Abstract Extending the notion of global search to multiobjective optimization is far than straightfo...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
In this report we describe a set of numerical experiments carried out in order to appreciate the mer...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
Finding a global optimum of an unknown system has attracted a great deal of interest in many enginee...
A direct stochastic algorithm for global search This paper presents a new algorithm called PGSL- Pro...
A novel algorithm for the global optimization of functions (C-RTS) is presented, in which a combinat...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
This repository holds the source code for the new optimization algorithm Pareto-like Sequential Samp...
Abstract In this research, a new method for population initialisation in meta‐heuristic algorithms b...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
In this paper, we propose a multi-restart memetic algorithm framework for box constrained global con...
A novel algorithm for the global optimisation of functions (C-RTS) is presented, in which a combinat...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
Abstract Extending the notion of global search to multiobjective optimization is far than straightfo...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
In this report we describe a set of numerical experiments carried out in order to appreciate the mer...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
Finding a global optimum of an unknown system has attracted a great deal of interest in many enginee...
A direct stochastic algorithm for global search This paper presents a new algorithm called PGSL- Pro...
A novel algorithm for the global optimization of functions (C-RTS) is presented, in which a combinat...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...