This paper presents a hybrid evolutionary algorithm (EA) to solve nonlinear-regression problems. Although EAs have proven their ability to explore large search spaces, they are comparatively inefficient in fine tuning the solution. This drawback is usually avoided by means of local optimization algorithms that are applied to the individuals of the population. The algorithms that use local optimization procedures are usually called hybrid algorithms. On the other hand, it is well known that the clustering process enables the creation of groups (clusters) with mutually close points that hopefully correspond to relevant regions of attraction. Local-search procedures can then be started once in every such region
One of the most widely used algorithms to solve clustering problems is the K-means. Despite of the a...
Abstract. It is general knowledge that hybrid approaches can improve the performance of search heuri...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
Hybrid algorithms formed by the combination of Genetic Algorithms with Local Search methods provide ...
Abstract. A challenge in hybrid evolutionary algorithms is to employ efficient strategies to cover a...
The paper focuses on the efficiency of local search in a Hybrid evolutionary algorithm (HEA), with a...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
Evolutionary algorithms are robust and powerful global optimization techniques for solving large-sca...
Evolutionary Algorithms are robust and powerful global optimization techniques for solving large sc...
Hybridization of local search based algorithms with evolutionary algorithms is still an under-explo...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Recently, a hybrid methodology for combining genetic algorithms and local search algorithms has rece...
One of the most widely used algorithms to solve clustering problems is the K-means. Despite of the a...
Abstract. It is general knowledge that hybrid approaches can improve the performance of search heuri...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
Hybrid algorithms formed by the combination of Genetic Algorithms with Local Search methods provide ...
Abstract. A challenge in hybrid evolutionary algorithms is to employ efficient strategies to cover a...
The paper focuses on the efficiency of local search in a Hybrid evolutionary algorithm (HEA), with a...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
Evolutionary algorithms are robust and powerful global optimization techniques for solving large-sca...
Evolutionary Algorithms are robust and powerful global optimization techniques for solving large sc...
Hybridization of local search based algorithms with evolutionary algorithms is still an under-explo...
This paper develops a framework for optimizing global-local hybrids of search or optimization proc...
Recently, a hybrid methodology for combining genetic algorithms and local search algorithms has rece...
One of the most widely used algorithms to solve clustering problems is the K-means. Despite of the a...
Abstract. It is general knowledge that hybrid approaches can improve the performance of search heuri...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...