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User Preferences in Bayesian Multi-objective Optimization: The Expected Weighted Hypervolume Improvement Criterion

机译:用户偏好在贝叶斯多目标优化中:预期的加权超越改进标准

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In this article, we present a framework for taking into account user preferences in multi-objective Bayesian optimization in the case where the objectives are expensive-to-evaluate black-box functions. A novel expected improvement criterion to be used within Bayesian optimization algorithms is introduced. This criterion, which we call the expected weighted hypervolume improvement (EWHI) criterion, is a generalization of the popular expected hypervolume improvement to the case where the hypervolume of the dominated region is defined using a user-defined absolutely continuous measure instead of the Lebesgue measure. The EWHI criterion takes the form of an integral for which no closed form expression exists in the general case. To deal with its computation, we propose an importance sampling approximation method. A sampling density that is optimal for the computation of the EWHI for a predefined set of points is crafted and a sequential Monte-Carlo (SMC) approach is used to obtain a sample approximately distributed from this density. The ability of the criterion to produce optimization strategies oriented by user preferences is demonstrated on a simple bi-objective test problem in the cases of a preference for one objective and of a preference for certain regions of the Pareto front.
机译:在本文中,我们介绍了一个框架,用于考虑在目标昂贵的黑盒功能昂贵的贝叶斯优化中的用户偏好。介绍了贝叶斯优化算法中使用的新型预期改进标准。这条标准,我们称之为加权的超级高档改进(EWHI)标准,是使用用户定义的绝对连续测量而不是LEBESGUE测量来定义主导地区的超级潜水机构的情况的流行预期超潜水型改进的概率。 。 EWHI标准采用常规情况下不存在闭合形式表达的积分形式。要处理其计算,我们提出了一种重要的采样近似方法。为预定义点的EWHI进行了最佳的采样密度被制成了用于预定义点的eWhi,并且使用顺序蒙特卡罗(SMC)方法来获得从该密度近似分布的样品。在偏好的一个客观和帕累托前部的某些区域的偏好和偏好的情况下,在简单的双目标测试问题上证明了由用户偏好产生优化策略的能力。

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