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A Multiobjective Evolutionary Algorithm Using Gaussian Process-Based Inverse Modeling

机译:基于高斯过程逆建模的多目标进化算法

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摘要

To approximate the Pareto front, most existing multiobjective evolutionary algorithms store the nondominated solutions found so far in the population or in an external archive during the search. Such algorithms often require a high degree of diversity of the stored solutions and only a limited number of solutions can be achieved. By contrast, model-based algorithms can alleviate the requirement on solution diversity and in principle, as many solutions as needed can be generated. This paper proposes a new model-based method for representing and searching nondominated solutions. The main idea is to construct Gaussian process-based inverse models that map all found nondominated solutions from the objective space to the decision space. These inverse models are then used to create offspring by sampling the objective space. To facilitate inverse modeling, the multivariate inverse function is decomposed into a group of univariate functions, where the number of inverse models is reduced using a random grouping technique. Extensive empirical simulations demonstrate that the proposed algorithm exhibits robust search performance on a variety of medium to high dimensional multiobjective optimization test problems. Additional nondominated solutions are generated using the constructed models to increase the density of solutions in the preferred regions at a low computational cost.
机译:为了近似Pareto前沿,大多数现有的多目标进化算法将迄今为止在搜索过程中发现的非支配解存储在总体中或外部档案中。这样的算法通常需要所存储解决方案的高度多样性,并且只能实现有限数量的解决方案。相比之下,基于模型的算法可以减轻对解决方案多样性的需求,并且原则上可以生成所需数量的解决方案。本文提出了一种新的基于模型的表示和搜索非支配解的方法。主要思想是构建基于高斯过程的逆模型,该模型将所有找到的非支配解映射到从目标空间到决策空间。这些逆模型然后通过对目标空间进行采样来创建后代。为了促进逆建模,将多元逆函数分解为一组单变量函数,其中使用随机分组技术减少逆模型的数量。大量的经验仿真表明,该算法在各种中到高维多目标优化测试问题上均表现出强大的搜索性能。使用构建的模型可以生成其他非支配解,从而以较低的计算成本来增加首选区域中的解密度。

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