Increasing interest in simultaneously optimizing many objectives (typically more than three objectives) of problems leads to the emergence of various many-objective algorithms in the evolutionary multi-objective optimization field. However, in contrast to the development of algorithm design, how to assess many-objective algorithms has received scant concern. Many performance indicators are designed in principle for any number of objectives, but in practice are invalid or infeasible to be used in many-objective optimization. In this paper, we explain the di culties that popular performance indicators face and propose a performance comparison indicator (PCI) to assess Pareto front approximations obtained by many-objective algorithms. PCI ev...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
Visualisation of Pareto Front (PF) approximations of many-objective optimisation problems (MaOP) is ...
International audienceIt is a common held assumption that problems with many objectives are harder t...
Diversity assessment of Pareto front approximations is an important issue in the stochastic multiobj...
In the recent years, the development of new algorithms for multiobjective optimization has considera...
In multi‐ and many‐objective optimization problems, the optimization target is to obtain a set of no...
International audienceA large spectrum of quality indicators has been proposed so far to assess the ...
Optimizing multiple conflicting objectives results in more than one optimal solution (known as Paret...
Abstract- Multi-objective evolutionary algorithms are widely established and well developed for prob...
International audienceThis work studies the behavior of three elitist multi- and many-objective evol...
An important issue in multiobjective optimization is the quantitative comparison of the perfor mance...
In multi-objective optimization, it is non-trivial for decision makers to articulate preferences wit...
In multiobjective optimization, a good quality indicator is of great importance to the performance a...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, and...
Qin S, Sun C, Liu Q, Jin Y. A Performance Indicator Based Infill Criterion for Expensive Multi-/Many...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
Visualisation of Pareto Front (PF) approximations of many-objective optimisation problems (MaOP) is ...
International audienceIt is a common held assumption that problems with many objectives are harder t...
Diversity assessment of Pareto front approximations is an important issue in the stochastic multiobj...
In the recent years, the development of new algorithms for multiobjective optimization has considera...
In multi‐ and many‐objective optimization problems, the optimization target is to obtain a set of no...
International audienceA large spectrum of quality indicators has been proposed so far to assess the ...
Optimizing multiple conflicting objectives results in more than one optimal solution (known as Paret...
Abstract- Multi-objective evolutionary algorithms are widely established and well developed for prob...
International audienceThis work studies the behavior of three elitist multi- and many-objective evol...
An important issue in multiobjective optimization is the quantitative comparison of the perfor mance...
In multi-objective optimization, it is non-trivial for decision makers to articulate preferences wit...
In multiobjective optimization, a good quality indicator is of great importance to the performance a...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, and...
Qin S, Sun C, Liu Q, Jin Y. A Performance Indicator Based Infill Criterion for Expensive Multi-/Many...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
Visualisation of Pareto Front (PF) approximations of many-objective optimisation problems (MaOP) is ...
International audienceIt is a common held assumption that problems with many objectives are harder t...