一种改进的多目标贝叶斯进化优化期望改进准则

H. Bian, Jialiang Yu, Jie Tian, Junqing Li
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引用次数: 1

摘要

期望改进(EI)准则定期用于平衡全局搜索和局部搜索,以进一步优化当前最优解。然而,替代模型提出的不确定性度量在中等规模问题中可能失去有效性。由于不确定度测量是充填准则的重要组成部分,贝叶斯优化可能会因不确定度测量失败而导致错误的优化方向。为了解决这一问题,我们提出了一种改进的基于信息熵的期望改进(IEEI),用于选择需要使用原始函数进行实际计算的候选解。其主要思想是用信息熵模型得到的预测误差代替代理模型提供的均方根误差。在每个测试问题中,与标准EI准则相比,改进的EI准则在性能评价方面可以获得更具竞争力的优化结果。它能有效稳定地逼近全局最优解,提高模型的精度。
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A Modified Expected Improvement Criterion for Multi-objective Bayesian Evolutionary Optimization
The Expected Improvement(EI) criterion is regularly used to balance global search and local search to further optimize the current optimal solution. However, the uncertainty measure proposed by surrogated model probably lose efficacy in medium-scale problems. As uncertainty measurement is an important component of the infill criterion, Bayesian optimization may get a wrong optimization directin with the uncertainty measurement failure. To solve this problem, we propose a modified Expected Improvement based on Information Entropy(IEEI), which is used to select candidate solutions that need to use the original function for real calculation. The main idea is to replace the root mean square error provided by the surrogate model with the prediction error obtained by the information entropy model. In each test problem, the improved EI criterion can obtain more competitive optimization results in performance evaluation compared with the standard EI criterion. It can effectively and stably approach the global optimal solution and improve the accuracy of the model.
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