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Adaptive reference vector generation for inverse model based evolutionary multiobjective optimization with degenerate and disconnected pareto fronts

机译:具有退化和不连续Pareto Fronts的基于逆模型的进化多目标优化的自适应参考矢量生成

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摘要

Inverse model based multiobjective evolutionary algorithm aims to sample candidate solutions directly in the objective space, which makes it easier to control the diversity of non-dominated solutions in multiobjective optimization. To facilitate the process of inverse modeling, the objective space is partitioned into several subregions by predefining a set of reference vectors. In the previous work, the reference vectors are uniformly distributed in the objective space. Uniformly distributed reference vectors, however, may not be efficient for problems that have nonuniform or disconnected Pareto fronts. To address this issue, an adaptive reference vector generation strategy is proposed in this work. The basic idea of the proposed strategy is to adaptively adjust the reference vectors according to the distribution of the candidate solutions in the objective space. The proposed strategy consists of two phases in the search procedure. In the first phase, the adaptive strategy promotes the population diversity for better exploration, while in the second phase, the strategy focused on convergence for better exploitation. To assess the performance of the proposed strategy, empirical simulations are carried out on two DTLZ benchmark problems, namely, DTLZ5 and DTLZ7, which have a degenerate and a disconnected Pareto front, respectively. Our results show that the proposed adaptive reference vector strategy is promising in tacking multiobjective optimization problems whose Pareto front is disconnected.
机译:基于逆模型的多目标进化算法旨在直接在目标空间中对候选解进行采样,这使得在多目标优化中更容易控制非支配解的多样性。为了促进逆建模的过程,通过预定义一组参考向量将目标空间划分为几个子区域。在先前的工作中,参考向量均匀分布在目标空间中。但是,均匀分布的参考向量对于帕累托前沿不均匀或断开的问题可能无效。为了解决这个问题,在这项工作中提出了一种自适应参考矢量生成策略。提出的策略的基本思想是根据目标空间中候选解的分布来自适应地调整参考向量。所提出的策略由搜索过程的两个阶段组成。在第一阶段,适应性战略促进了人口多样性,以便更好地进行勘探,而在第二阶段,该战略侧重于趋同以实现更好的开发。为了评估所提出策略的性能,对两个DTLZ基准问题即DTLZ5和DTLZ7进行了经验模拟,这两个问题分别具有退化的Pareto前沿和断开的Pareto前沿。我们的结果表明,提出的自适应参考矢量策略有望解决帕累托前沿不连续的多目标优化问题。

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    Cheng, R; Jin, Y; Narukawa, K;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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