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Regional Error Estimation of Surrogates (REES)

机译:代理人的区域误差估计(REES)

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摘要

Surrogate-based design is an effective approach for modeling computationally expensive system behavior. In such application, it is often challenging to characterize the expected accuracy of the surrogate. In addition to global and local error measures, regional error measures can be used to understand and interpret the surrogate accuracy in the regions of interest. This paper develops the Regional Error Estimation of Surrogate (REES) method to quantify the level of the error in any given subspace (or region) of the entire domain, when all the available training points have been invested to build the surrogate. In this approach, the accuracy of the surrogate in each subspace is estimated by modeling the variations of the mean and the maximum error in that subspace with increasing number of training points (in an iterative process). A regression model is used for this purpose. At each iteration, the intermediate surrogate is constructed using a subset of the entire training data, and tested over the remaining points. The evaluated errors at the intermediate test points at each iteration are used for training the regression model that represents the error variation with sample points. The effectiveness of the proposed method is illustrated using standard test problems. To this end, the predicted regional errors of the surrogate constructed using all the training points are compared with the regional errors estimated over a large set of test points.
机译:基于代理的设计是一种对计算上昂贵的系统行为进行建模的有效方法。在这样的应用中,表征替代物的预期精度通常是有挑战性的。除了全局和局部误差度量外,区域误差度量还可用于了解和解释感兴趣区域中的替代精度。本文开发了区域替代品的误差估计(REES)方法,以量化在整个域的任何给定子空间(或区域)中的误差水平,前提是已投入了所有可用的训练点来构建替代品。在这种方法中,通过对随着增加的训练点数量(在迭代过程中)该子空间中的均值和最大误差的变化进行建模,可以估算每个子空间中替代项的准确性。为此使用了回归模型。在每次迭代中,使用整个训练数据的子集构造中间代理,并在其余点上进行测试。在每次迭代的中间测试点处评估的误差用于训练回归模型,该回归模型表示误差随样本点的变化。使用标准测试问题说明了该方法的有效性。为此,将使用所有训练点构建的代理的预测区域误差与在大量测试点上估计的区域误差进行比较。

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