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An efficient batch expensive multi-objective evolutionary algorithm based on Decomposition

机译:基于分解的高效批处理昂贵的多目标进化算法

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This paper proposes a novel surrogate-model-based multi-objective evolutionary algorithm, which is called Multi-objective Bayesian Optimization Algorithm based on Decomposition (MOBO/D). In this algorithm, a multi-objective problem is decomposed into several subproblems which will be solved simultaneously. MOBO/D builds Gaussian process model for each objective to learn the optimization surface, and defines utility function for each subproblem to guide the searching process. At each generation, MOEA/D algorithm is called to locate a set of candidate solutions which maximize all utility functions respectively, and a subset of those candidate solutions is selected for parallel batch evaluation. Experimental study on different test instances validates that MOBO/D can efficiently solve expensive multi-objective problems in parallel. The performance of MOBO/D is also better than several classical expensive optimization methods.
机译:提出了一种新的基于代理模型的多目标进化算法,即基于分解的多目标贝叶斯优化算法(MOBO / D)。在该算法中,将多目标问题分解为几个子问题,这些子问题将同时解决。 MOBO / D为每个目标建立高斯过程模型以学习优化表面,并为每个子问题定义效用函数以指导搜索过程。在每一代中,都将调用MOEA / D算法来定位一组候选解决方案,这些候选解决方案分别最大化所有效用函数,并选择这些候选解决方案的子集进行并行批处理评估。在不同测试实例上进行的实验研究证明,MOBO / D可以有效地并行解决昂贵的多目标问题。 MOBO / D的性能也优于几种经典的昂贵优化方法。

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