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Ensemble of surrogates with recursive arithmetic average

机译:具有递归算术平均值的代理集合

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Surrogate models are often used to replace expensive simulations of engineering problems. The common approach is to construct a series of metamodels based on a training set, and then, from these surrogates, pick out the best one with the highest accuracy as an approximation of the computationally intensive simulation. However, because the choice of approximate model depends on design of experiments (DOEs), the traditional strategy thus increases the risk of adopting an inappropriate model. Furthermore, in the design of complex product system, because of its feature of one-of-a-kind production, acquiring more samples is very expensive and intensively time-consuming, and sometimes even impossible. Therefore, in order to save sampling cost, it is a reasonable strategy to take full advantage of all the stand-alone surrogates and then combine them into an ensemble model. Ensemble technique is an effective way to make up for the shortfalls of traditional strategy. Motivated by the previous research on ensemble of surrogates, a new technique for constructing of a more accurate ensemble of surrogates is proposed in this paper. The weights are obtained using a recursive process, in which the values of these weights are updated in each iteration until the last ensemble achieves a desirable prediction accuracy. This technique has been evaluated using five benchmark problems and one reality problem. The results show that the proposed ensemble of surrogates with recursive arithmetic average provides more ideal prediction accuracy than the stand-alone surrogates and for most problems even exceeds the previously presented ensemble techniques. Finally, we should point out that the advantages of combination over selection are still difficult to illuminate. We are still using an "insurance policy" mode rather than offering significant improvements.
机译:替代模型通常用于代替昂贵的工程问题模拟。常用的方法是根据训练集构建一系列元模型,然后从这些替代物中选择出精度最高的最佳模型作为计算密集型模拟的近似值。但是,由于近似模型的选择取决于实验设计(DOE),因此传统策略会增加采用不合适模型的风险。此外,在复杂产品系统的设计中,由于具有一种样的生产特性,因此获取更多样本非常昂贵且费时,甚至有时是不可能的。因此,为了节省采样成本,充分利用所有独立替代物并将它们组合成一个集成模型是一种合理的策略。合奏技术是弥补传统策略不足的有效途径。在先前关于替代物集合的研究的推动下,本文提出了一种构建更精确的替代物集合的新技术。使用递归过程获得权重,其中在每次迭代中更新这些权重的值,直到最后一个集合达到理想的预测精度为止。已使用五个基准问题和一个现实问题对这种技术进行了评估。结果表明,所提出的具有递归算术平均值的替代物集合比独立的替代物提供了更理想的预测精度,并且对于大多数问题,甚至超过了先前提出的集合技术。最后,我们应该指出,组合相对于选择的优势仍然难以阐明。我们仍在使用“保险政策”模式,而不是进行重大改进。

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