Evolutionary algorithms (EAs) are the preferred method for solving black-box multi-objective optimization problems, but when gradients of the objective functions are available, it is not straightforward to exploit these efficiently. By contrast, gradient-based optimization is well-established for single-objective optimization. A single-objective reformulation of the multi-objective problem could therefore offer a solution. Of particular interest to this end is the recently introduced uncrowded hypervolume (UHV) indicator, which is Pareto compliant and also takes into account dominated solutions. In this work, we show that the gradient of the UHV can often be computed, which allows for a direct application of gradient ascent algorithms. We c...
Evolutionary algorithms are successfully used for many-objective optimization. However, solutions ar...
Many optimization problems arising in applications have to consider several objective functions at t...
Evolutionary algorithms based on hypervolume have demonstrated good performance for solving many-obj...
Evolutionary algorithms (EAs) are the preferred method for solving black-box multi-objective optimiz...
Evolutionary algorithms (EAs) are well-known to be well suited for multi-objective (MO) optimization...
Evolutionary algorithms (EAs) are well-known to be well suited for multi-objective (MO) optimization...
The search for the best trade-off solutions with respect to several criteria (also called the Pareto...
The Expected Hypervolume Improvement (EHVI) is a frequently used infill criterion in Multi-Objective...
Abstract—In the field of evolutionary multi-criterion optimiza-tion, the hypervolume indicator is th...
Abstract—Hypervolume indicator is a commonly accepted quality measure to assess the set of non-domin...
In the field of evolutionary multi-criterion optimization, the hypervolume indicator is the only sin...
In the field of evolutionary multi-criterion optimization, the hypervolume indicator is the only sin...
International audienceIn recent years, indicator-based evolutionary algorithms, allowing to implicit...
Abstract In the field of evolutionary multiobjective optimization, the hypervolume indicator is the ...
AbstractIn recent years, indicator-based evolutionary algorithms, allowing to implicitly incorporate...
Evolutionary algorithms are successfully used for many-objective optimization. However, solutions ar...
Many optimization problems arising in applications have to consider several objective functions at t...
Evolutionary algorithms based on hypervolume have demonstrated good performance for solving many-obj...
Evolutionary algorithms (EAs) are the preferred method for solving black-box multi-objective optimiz...
Evolutionary algorithms (EAs) are well-known to be well suited for multi-objective (MO) optimization...
Evolutionary algorithms (EAs) are well-known to be well suited for multi-objective (MO) optimization...
The search for the best trade-off solutions with respect to several criteria (also called the Pareto...
The Expected Hypervolume Improvement (EHVI) is a frequently used infill criterion in Multi-Objective...
Abstract—In the field of evolutionary multi-criterion optimiza-tion, the hypervolume indicator is th...
Abstract—Hypervolume indicator is a commonly accepted quality measure to assess the set of non-domin...
In the field of evolutionary multi-criterion optimization, the hypervolume indicator is the only sin...
In the field of evolutionary multi-criterion optimization, the hypervolume indicator is the only sin...
International audienceIn recent years, indicator-based evolutionary algorithms, allowing to implicit...
Abstract In the field of evolutionary multiobjective optimization, the hypervolume indicator is the ...
AbstractIn recent years, indicator-based evolutionary algorithms, allowing to implicitly incorporate...
Evolutionary algorithms are successfully used for many-objective optimization. However, solutions ar...
Many optimization problems arising in applications have to consider several objective functions at t...
Evolutionary algorithms based on hypervolume have demonstrated good performance for solving many-obj...