This paper introduces a multi-objective EA, termed the Clustering Pareto Evolutionary Algorithm (CPEA). The CPEA finds and retains many local Pareto- optimal fronts, rather than just the global front as is the case of most multi- objective EAs found in the literature. This has been achieved using a clustering technique commonly used in multivariate statistical analysis, which ensures that competition between individuals is local in variable space, allowing the population to grow to resolve as many Pareto-optimal fronts as necessary. The performance of the CPEA is evaluated on several test problems taken from the literature which have either single optima or multiple local optima and is shown to be extremely effective. The present clustering...
In multimodal multiobjective optimization problems (MMOPs), multiple Pareto optimal sets, even some ...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
Real-world problems often involve the optimisation of multiple conflicting objectives. These problem...
Abstract. The CPEA, an Evolutionary Algorithm that preserves diversity by find-ing clusters in the p...
The CEPA, an Evolutionary Algorithm that preserves diversity by finding clusters in the population, ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
Among Evolutionary Multiobjective Optimization Algorithms (EMOA) there are many which find only Pare...
This thesis presents the development of new methods for the solution of multiple objective problems....
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Abstract—In this paper, we propose a clustering based mul-tiobjective evolutionary algorithm (CLUMOE...
Real world optimization problems always possess multiple objectives which are conflict in nature. Mu...
Abstract. We propose a new version of a multiobjective coevolutionary algorithm. The main idea of th...
In this work we investigate the use of Multi-Objective metaheuristics for the data-mining task of cl...
In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the p...
Division of the evolutionary search among multiple multi-objective evolutionary algorithms (MOEAs) i...
In multimodal multiobjective optimization problems (MMOPs), multiple Pareto optimal sets, even some ...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
Real-world problems often involve the optimisation of multiple conflicting objectives. These problem...
Abstract. The CPEA, an Evolutionary Algorithm that preserves diversity by find-ing clusters in the p...
The CEPA, an Evolutionary Algorithm that preserves diversity by finding clusters in the population, ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
Among Evolutionary Multiobjective Optimization Algorithms (EMOA) there are many which find only Pare...
This thesis presents the development of new methods for the solution of multiple objective problems....
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Abstract—In this paper, we propose a clustering based mul-tiobjective evolutionary algorithm (CLUMOE...
Real world optimization problems always possess multiple objectives which are conflict in nature. Mu...
Abstract. We propose a new version of a multiobjective coevolutionary algorithm. The main idea of th...
In this work we investigate the use of Multi-Objective metaheuristics for the data-mining task of cl...
In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the p...
Division of the evolutionary search among multiple multi-objective evolutionary algorithms (MOEAs) i...
In multimodal multiobjective optimization problems (MMOPs), multiple Pareto optimal sets, even some ...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
Real-world problems often involve the optimisation of multiple conflicting objectives. These problem...