Model-based evolutionary algorithms (EAs) adapt an underlying search model to features of the problem at hand, such as the linkage between problem variables. The performance of EAs often deteriorates as multiple modes in the fitness landscape are modelled with a unimodal search model. The number of modes is however often unknown a priori, especially in a black-box setting, which complicates adaptation of the search model. In this work, we focus on models that can adapt to the multi-modality of the fitness landscape. Specifically, we introduce Hill-Valley Clustering, a remarkably simple approach to adaptively cluster the search space in niches, such that a single mode resides in each niche. In each of the located niches, a core search algori...
Interest on dynamic multimodal functions risen over the last years since many real problems have thi...
We propose a novel clustering-based model-building evolutionary algorithm to tackle optimization pro...
When optimizing multi-modal spaces, effective search techniques must carefully balance two conflicti...
Model-based evolutionary algorithms (EAs) adapt an underlying search model to features of the proble...
In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the p...
The aim of multimodal optimization (MMO) is to obtain all global optima of an optimization problem. ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
The codebase for this paper, containing LSEA_EA algorithm, is available at https://github.com/fields...
Abstract—There has been a steady growth in interest in niching approaches within the evolutionary co...
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
Niche formation allows evolutionary algorithms to be used when the location and maintenance of multi...
This paper investigates the performance of multistart next ascent hillclimbing and well-known evolut...
Interest on dynamic multimodal functions risen over the last years since many real problems have thi...
We propose a novel clustering-based model-building evolutionary algorithm to tackle optimization pro...
When optimizing multi-modal spaces, effective search techniques must carefully balance two conflicti...
Model-based evolutionary algorithms (EAs) adapt an underlying search model to features of the proble...
In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the p...
The aim of multimodal optimization (MMO) is to obtain all global optima of an optimization problem. ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
The codebase for this paper, containing LSEA_EA algorithm, is available at https://github.com/fields...
Abstract—There has been a steady growth in interest in niching approaches within the evolutionary co...
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
Niche formation allows evolutionary algorithms to be used when the location and maintenance of multi...
This paper investigates the performance of multistart next ascent hillclimbing and well-known evolut...
Interest on dynamic multimodal functions risen over the last years since many real problems have thi...
We propose a novel clustering-based model-building evolutionary algorithm to tackle optimization pro...
When optimizing multi-modal spaces, effective search techniques must carefully balance two conflicti...