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PARAMETER-DEPENDENT MODEL-BLENDING WITH MULTI-EXPERT BASED MACHINE LEARNING AND PROXY SITES

机译:基于多专家的机器学习和代理站点的参数依赖模型混合

摘要

A parameter-based multi-model blending method and system are described. The method includes selecting a parameter of interest among parameters estimated by each of a set of individual models, running the set of individual models with a range of inputs to obtain a range of estimates of the parameters from each of the set of individual models, and identifying, for each of the set of individual models, critical parameters among the parameters estimated, the critical parameters exhibiting a specified correlation with an error in estimation of the parameter of interest. For each subspace of combinations of the critical parameters, obtaining a parameter-based blended model is based on blending the set of individual models in accordance with the subspace of the critical parameters, the subspace defining a sub-range for each of the critical parameters.
机译:描述了一种基于参数的多模型融合方法和系统。该方法包括:在由一组单独模型中的每一个估计的参数中选择感兴趣的参数;以一系列输入运行一组单独模型,以从该组单独模型中的每一个中获得参数的估计范围;以及对于估计的参数中的每一个,每个模型都确定关键参数,这些关键参数表现出特定的相关性,并且与目标参数的估计误差有关。对于关键参数组合的每个子空间,获得基于参数的混合模型是基于根据关键参数的子空间混合单个模型的集合,该子空间为每个关键参数定义了一个子范围。

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