Most preference-based multi-objective evolutionary algorithms use reference points to articulate the decision maker's preferences. Since these algorithms typically converge to a sub-region of the Pareto-optimal front, the use of conventional performance measures (such as hypervolume and inverted generational distance) may lead to misleading results. Therefore, experimental studies in preference-based optimization often resort to using graphical methods to compare various algorithms. Though a few ad-hoc measures have been proposed in the literature, they either fail to generalize or involve parameters that are non-intuitive for a decision maker. In this paper, we propose a performance metric that is simple to implement, inexpensive to comput...
In this paper we propose a user-preference based evolutionary algorithm that relies on decomposition...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, an...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, and...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
This paper proposes an improved performance metric for multiobjective evolutionary algorithms with u...
Aiming at the difficulty in evaluating preference-based evolutionary multiobjective optimization, th...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
Diversity preservation plays an important role in the design of multi-objective evolutionary algori...
In this paper we propose to use a distance metric based on user-preferences to efficiently find solu...
Diversity preservation plays an important role in the design of multi-objective evolutionary algorit...
In evolutionary multi-objective optimization, maintaining a good balance between convergence and div...
In this paper we propose a user-preference based evolutionary algorithm that relies on decomposition...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, an...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, and...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
This paper proposes an improved performance metric for multiobjective evolutionary algorithms with u...
Aiming at the difficulty in evaluating preference-based evolutionary multiobjective optimization, th...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
Diversity preservation plays an important role in the design of multi-objective evolutionary algori...
In this paper we propose to use a distance metric based on user-preferences to efficiently find solu...
Diversity preservation plays an important role in the design of multi-objective evolutionary algorit...
In evolutionary multi-objective optimization, maintaining a good balance between convergence and div...
In this paper we propose a user-preference based evolutionary algorithm that relies on decomposition...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, an...
The effectiveness of evolutionary algorithms have been verified on multi-objective optimization, and...