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An Interactive Evolutionary Multiobjective Optimization Method Based on Progressively Approximated Value Functions

机译:基于渐进近似值函数的交互式进化多目标优化方法

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This paper suggests a preference-based methodology, which is embedded in an evolutionary multiobjective optimization algorithm to lead a decision maker (DM) to the most preferred solution of her or his choice. The progress toward the most preferred solution is made by accepting preference based information progressively from the DM after every few generations of an evolutionary multiobjective optimization algorithm. This preference information is used to model a strictly monotone value function, which is used for the subsequent iterations of the evolutionary multiobjective optimization (EMO) algorithm. In addition to the development of the value function which satisfies DM's preference information, the proposed progressively interactive EMO-approach utilizes the constructed value function in directing EMO algorithm's search to more preferred solutions. This is accomplished using a preference-based domination principle and utilizing a preference-based termination criterion. Results on two- to five-objective optimization problems using the progressively interactive NSGA-II approach show the simplicity of the proposed approach and its future promise. A parametric study involving the algorithm's parameters reveals interesting insights of parameter interactions and indicates useful parameter values. A number of extensions to this paper are also suggested.
机译:本文提出了一种基于偏好的方法,该方法嵌入在进化多目标优化算法中,以使决策者(DM)获得其选择的最优选的解决方案。每经过几代进化多目标优化算法,逐步从DM接受基于偏好的信息,从而朝着最优选的解决方案迈进。此首选项信息用于对严格的单调值函数进行建模,该函数用于演化多目标优化(EMO)算法的后续迭代。除了开发满足DM偏好信息的价值函数外,提出的渐进式交互EMO方法还利用构造的价值函数将EMO算法的搜索引向更优选的解决方案。这是使用基于首选项的控制原则和基于首选项的终止标准来完成的。使用渐进交互式NSGA-II方法进行的2到5个目标优化问题的结果显示了该方法的简单性及其未来前景。涉及算法参数的参数研究揭示了参数交互的有趣见解,并指出了有用的参数值。还建议对本文进行一些扩展。

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