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Handling expensive multi-objective optimization problems with a cluster-based neighborhood regression model

机译:处理基于集群的邻域回归模型的昂贵的多目标优化问题

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This paper gives attention to multi-objective optimization in scenarios where objective function evaluation is expensive, that is, expensive multi-objective optimization. We firstly propose a cluster-based neighborhood regression model, which incorporates the linear regression technique to predict the descent direction and generate new potential offspring. Combining this model with the classical decomposition-based multi-objective optimization framework, we propose an efficient and effective algorithm for tackling computationally expensive multi-objective optimization problems. As opposed to the conventional approach of replacing the original time-consuming objective functions with the approximated ones obtained by surrogate model, the proposed algorithm incorporates the proposed regression model to serve as an operator producing higher-quality offspring so that the algorithm requires fewer iterations to reach a given solution quality. The proposed algorithm is compared with several state-of-the-art surrogate-assisted algorithms on a variety of well-known benchmark problems. Empirical results demonstrate that the proposed algorithm outperforms or is competitive with other peer algorithms, and has the ability to keep a good trade-off between solution quality and running time within a fairly small number of function evaluations. In particular, our proposed algorithm shows obvious superiority in terms of the computational time used for the algorithm components, and can obtain acceptable solutions for expensive problems with high efficiency. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提请注意客观函数评估昂贵的方案中的多目标优化,即昂贵的多目标优化。我们首先提出了一种基于群集的邻域回归模型,其包括线性回归技术来预测下降方向并产生新的潜在后代。将该模型与基于古典分解的多目标优化框架相结合,我们提出了一种用于解决计算昂贵的多目标优化问题的有效且有效的算法。与用替代模型获得的近似的近似耗时的目标函数替换原始耗时的目标函数的传统方法相反,所提出的算法包含所提出的回归模型,以用作产生更高质量的后代的操作员,以便该算法需要较少的迭代次数达到给定的解决方案质量。将所提出的算法与多种众所周知的基准问题的若干先进的代理辅助算法进行比较。经验结果表明,所提出的算法优于或与其他对等算法竞争的竞争力,并且能够在相当少量的功能评估中保持解决方案质量和运行时间之间的良好权衡。特别是,我们所提出的算法在用于算法组件的计算时间方面显示出明显的优势,并且可以获得高效率的昂贵问题的可接受解决方案。 (c)2019年Elsevier B.V.保留所有权利。

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