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Targeting solutions in Bayesian multi-objective optimization: sequential and batch versions

机译:贝叶斯多目标优化中的目标解决方案:顺序和批处理版本

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摘要

Multi-objective optimization aims at finding trade-off solutions to conflicting objectives. These constitute the Pareto optimal set. In the context of expensive-to-evaluate functions, it is impossible and often non-informative to look for the entire set. As an end-user would typically prefer a certain part of the objective space, we modify the Bayesian multi-objective optimization algorithm which uses Gaussian Processes and works by maximizing the Expected Hypervolume Improvement, to focus the search in the preferred region. The cumulated effects of the Gaussian Processes and the targeting strategy lead to a particularly efficient convergence to the desired part of the Pareto set. To take advantage of parallel computing, a multi-point extension of the targeting criterion is proposed and analyzed.
机译:多目标优化的目的是找到针对冲突目标的折衷解决方案。这些构成了帕累托最优集。在评估功能昂贵的情况下,寻找整个集合是不可能的,而且常常是缺乏信息的。由于最终用户通常更喜欢目标空间的某个部分,因此我们修改了贝叶斯多目标优化算法,该算法使用高斯过程,并通过最大化期望的超量改进来工作,以将搜索集中在首选区域。高斯过程和目标策略的累积效应导致对帕累托集合的期望部分的特别有效的收敛。为了利用并行计算的优势,提出并分析了目标准则的多点扩展。

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