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Pareto navigator for interactive nonlinear multiobjective optimization

机译:交互式非线性多目标优化的Pareto导航器

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We describe a new interactive learning-oriented method called Pareto navigator for nonlinear multiobjective optimization. In the method, first a polyhedral approximation of the Pareto optimal set is formed in the objective function space using a relatively small set of Pareto optimal solutions representing the Pareto optimal set. Then the decision maker can navigate around the polyhedral approximation and direct the search for promising regions where the most preferred solution could be located. In this way, the decision maker can learn about the interdependencies between the conflicting objectives and possibly adjust one’s preferences. Once an interesting region has been identified, the polyhedral approximation can be made more accurate in that region or the decision maker can ask for the closest counterpart in the actual Pareto optimal set. If desired, (s)he can continue with another interactive method from the solution obtained. Pareto navigator can be seen as a nonlinear extension of the linear Pareto race method. After the representative set of Pareto optimal solutions has been generated, Pareto navigator is computationally efficient because the computations are performed in the polyhedral approximation and for that reason function evaluations of the actual objective functions are not needed. Thus, the method is well suited especially for problems with computationally costly functions. Furthermore, thanks to the visualization technique used, the method is applicable also for problems with three or more objective functions, and in fact it is best suited for such problems. After introducing the method in more detail, we illustrate it and the underlying ideas with an example.
机译:我们描述了一种新的面向交互式学习的方法,称为Pareto导航器,用于非线性多目标优化。在该方法中,首先使用表示帕累托最优集合的相对较小的帕累托最优解集合在目标函数空间中形成帕累托最优集合的多面体近似。然后,决策者可以绕着多面体近似进行导航,并指导寻找最有可能找到最佳解决方案的区域。这样,决策者可以了解相互矛盾的目标之间的相互依赖性,并可以调整自己的偏好。一旦确定了感兴趣的区域,就可以使该区域中的多面体近似更加准确,或者决策者可以要求实际帕累托最优集合中最接近的对应部分。如果需要,他可以从获得的解决方案中继续另一种交互方法。帕累托导航器可以看作是线性帕累托竞赛方法的非线性扩展。在生成了代表性的Pareto最优解集之后,Pareto导航器在计算上非常高效,因为计算是在多面体逼近中执行的,因此不需要对实际目标函数进行函数评估。因此,该方法特别适合于具有计算上昂贵的功能的问题。此外,由于使用了可视化技术,该方法还适用于具有三个或更多目标函数的问题,实际上,它最适合此类问题。在详细介绍了该方法之后,我们将通过一个示例来说明该方法及其基本思想。

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