This report presents a practical approach to stacked generalization in surrogate model based optimization. It exemplifies the integration of stacking methods into the surrogate model building process. First, a brief overview of the current state in surrogate model based opti- mization is presented. Stacked generalization is introduced as a promising ensemble surrogate modeling approach. Then two examples (the first is based on a real world application and the second on a set of artificial test functions) are presented. These examples clearly illustrate two properties of stacked generalization: (i) combining information from two poor performing models can result in a good performing model and (ii) even if the ensemble contains a good perform...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
International audienceMost surrogate approaches to multi-objective optimization build a surrogate mo...
When dealing with computationally expensive simulation codes or process measurement data, surrogate ...
When using machine learning techniques for learning a function approximation from given data it is o...
This paper discusses the idea of using a single Pareto-compliant surrogate model for multiobjective ...
The custom in surrogate-based modeling of complex engineering problems is to fit one or more surroga...
This archive provides source code for the example cases in the above-titled paper. The paper abstra...
Abstract. The paper deals with surrogate modelling, a modern approach to the optimization of empiric...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
A typical approach in surrogate-based modeling is to assess the performance of alternative surrogate...
This paper discusses the idea of using a single Pareto-compli-ant surrogate model for multiobjective...
International audienceTasks such as analysis, design optimization, and uncertainty quantification ca...
It is a common technique in global optimization with expensive black-box functions to learn a surrog...
When dealing with computationally expensive simulation codes or process measurement data, global sur...
In surrogate-based optimization, the designer's full precision computer (or even physical) models ar...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
International audienceMost surrogate approaches to multi-objective optimization build a surrogate mo...
When dealing with computationally expensive simulation codes or process measurement data, surrogate ...
When using machine learning techniques for learning a function approximation from given data it is o...
This paper discusses the idea of using a single Pareto-compliant surrogate model for multiobjective ...
The custom in surrogate-based modeling of complex engineering problems is to fit one or more surroga...
This archive provides source code for the example cases in the above-titled paper. The paper abstra...
Abstract. The paper deals with surrogate modelling, a modern approach to the optimization of empiric...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
A typical approach in surrogate-based modeling is to assess the performance of alternative surrogate...
This paper discusses the idea of using a single Pareto-compli-ant surrogate model for multiobjective...
International audienceTasks such as analysis, design optimization, and uncertainty quantification ca...
It is a common technique in global optimization with expensive black-box functions to learn a surrog...
When dealing with computationally expensive simulation codes or process measurement data, global sur...
In surrogate-based optimization, the designer's full precision computer (or even physical) models ar...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
International audienceMost surrogate approaches to multi-objective optimization build a surrogate mo...
When dealing with computationally expensive simulation codes or process measurement data, surrogate ...