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AN ADAPTIVE COPULA-BASED APPROACH FOR MODEL BIAS CHARACTERIZATION

机译:一种基于Copula的自适应模型偏差表征方法

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摘要

A copula-based approach for model bias characterization was previously proposed (18) aiming at improving prediction accuracy compared to other model characterization approaches such as regression and Gaussian Process. This paper proposes an adaptive copula-based approach for model bias identification to enhance the available methodology. The main idea is to use cluster analysis to pre-process data, then apply the copula-based approach using information from each cluster. The final prediction accumulates predictions obtained from each cluster. Two case studies will be used to demonstrate the superiority of the adaptive copula-based approach over its predecessor.
机译:先前提出了一种基于copula的模型偏差特征化方法(18),与其他模型特征化方法(如回归和高斯过程)相比,该方法旨在提高预测精度。本文提出了一种基于自适应copula的模型偏差识别方法,以增强可用的方法。主要思想是使用聚类分析来预处理数据,然后使用来自每个聚类的信息应用基于copula的方法。最终预测累积从每个群集获得的预测。将通过两个案例研究来证明基于自适应copula的方法优于其前身的方法。

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