textabstractLearning and exploiting problem structure is one of the key challenges in optimization. This is especially important for black-box optimization (BBO) where prior structural knowledge of a problem is not available. Existing model-based Evolutionary Algorithms (EAs) are very efficient at learning structure in both the discrete, and in the continuous domain. In this article, discrete and continuous model-building mechanisms are integrated for the Mixed-Integer (MI) domain, comprising discrete and continuous variables. We revisit a recently introduced model-based evolutionary algorithm for the MI domain, the Genetic Algorithm for Model-Based mixed-Integer opTimization (GAMBIT). We extend GAMBIT with a parameterless scheme that allow...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
Learning and exploiting problem structure is one of the key challenges in optimization. This is espe...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
Mixed-integer optimization considers problems with both discrete and continuous variables. The abili...
A key characteristic of Mixed-Integer (MI) problems is the presence of both continuous and discrete ...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Many problems are of a mixed integer nature, rather than being restricted to a single variable type...
Model-based black-box optimization is a topic that has been intensively studied both in academia and...
An important advantage of genetic algorithms (GAs) are their ease of use, their wide applicability, ...
Surrogate model assisted evolutionary algorithms (SAEAs) have recently attracted much attention due ...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
AbstractIn this paper, mixed-integer hybrid differential evolution (MIHDE) is developed to deal with...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
Learning and exploiting problem structure is one of the key challenges in optimization. This is espe...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
Mixed-integer optimization considers problems with both discrete and continuous variables. The abili...
A key characteristic of Mixed-Integer (MI) problems is the presence of both continuous and discrete ...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Many problems are of a mixed integer nature, rather than being restricted to a single variable type...
Model-based black-box optimization is a topic that has been intensively studied both in academia and...
An important advantage of genetic algorithms (GAs) are their ease of use, their wide applicability, ...
Surrogate model assisted evolutionary algorithms (SAEAs) have recently attracted much attention due ...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
AbstractIn this paper, mixed-integer hybrid differential evolution (MIHDE) is developed to deal with...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...