Two factors affect the effectiveness of exploration, the bias introduced by selection and the concurrence of exploration and exploitation. The Leaders and Followers metaheuristic was designed to reduce the bias from selection by using a two-population scheme. Minimum Population Search was designed to limit the concurrence of exploration and exploitation through the use of Thresheld Convergence in its sampling strategy. This paper presents Unbiased Exploratory Search, which combines both approaches and simultaneously addresses the effects of these two factors. An exploration-only exploitation-only hybrid is then presented using Unbiased Exploratory Search for the exploration-only phase of the hybrid. The hybrid is tested on the CEC large sca...
Finding a global optimum of an unknown system has attracted a great deal of interest in many enginee...
Abstract The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it als...
Minimum Population Search is a new metaheuristic specifically designed for optimization of multi-mod...
Many meta-heuristics attempt to “transition” a single algorithm from exploration to exploitation. Co...
Minimum Population Search is a new metaheuristic specifically designed for optimizing multi-modal pr...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
The goal of exploration to produce diverse search points throughout the search space can be countere...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Abstract—Global optimization process can often be divided into two subprocesses: exploration and exp...
A multi-modal search space can be defined as having multiple attraction basins – each basin has a si...
Abstract. It is general knowledge that hybrid approaches can improve the performance of search heuri...
Population-based heuristics can be effective at optimizing difficult multi-modal problems. However, ...
International audienceMetaheuristics Algorithms are widely recognized as one of the most practical a...
Minimum Population Search is a recently developed metaheuristic for optimization of mono-objective c...
Researchers have developed different metaheuristic algorithms to solve various optimization problems...
Finding a global optimum of an unknown system has attracted a great deal of interest in many enginee...
Abstract The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it als...
Minimum Population Search is a new metaheuristic specifically designed for optimization of multi-mod...
Many meta-heuristics attempt to “transition” a single algorithm from exploration to exploitation. Co...
Minimum Population Search is a new metaheuristic specifically designed for optimizing multi-modal pr...
Abstract—Continuous optimization is one of the most active research lines in evolutionary and metahe...
The goal of exploration to produce diverse search points throughout the search space can be countere...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Abstract—Global optimization process can often be divided into two subprocesses: exploration and exp...
A multi-modal search space can be defined as having multiple attraction basins – each basin has a si...
Abstract. It is general knowledge that hybrid approaches can improve the performance of search heuri...
Population-based heuristics can be effective at optimizing difficult multi-modal problems. However, ...
International audienceMetaheuristics Algorithms are widely recognized as one of the most practical a...
Minimum Population Search is a recently developed metaheuristic for optimization of mono-objective c...
Researchers have developed different metaheuristic algorithms to solve various optimization problems...
Finding a global optimum of an unknown system has attracted a great deal of interest in many enginee...
Abstract The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it als...
Minimum Population Search is a new metaheuristic specifically designed for optimization of multi-mod...