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A comparative study of metamodeling methods considering sample quality merits

机译:考虑样品质量优劣的元建模方法比较研究

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摘要

This research focuses on the study of the relationships between sample data characteristics and metamodel performance considering different types of metamodeling methods. In this work, four types of metamodeling methods, including multivariate polynomial method, radial basis function method, kriging method and Bayesian neural network method, three sample quality merits, including sample size, uniformity and noise, and four performance evaluation measures considering accuracy, confidence, robustness and efficiency, are considered. Different from other comparative studies, quantitative measures, instead of qualitative ones, are used in this research to evaluate the characteristics of the sample data. In addition, the Bayesian neural network method, which is rarely used in metamodeling and has never been considered in comparative studies, is selected in this research as a metamodeling method and compared with other metamodeling methods. A simple guideline is also developed for selecting candidate metamodeling methods based on sample quality merits and performance requirements.
机译:这项研究集中在考虑不同类型的元建模方法的样本数据特征与元模型性能之间的关系的研究。在这项工作中,四种类型的元建模方法(包括多元多项式方法,径向基函数方法,克里格法和贝叶斯神经网络方法),三种样本质量优劣(包括样本大小,均匀性和噪声)以及考虑准确性,置信度的四种性能评估措施,健壮性和效率。与其他比较研究不同,本研究使用定量方法而非定性方法来评估样本数据的特征。此外,本研究选择了贝叶斯神经网络方法作为元建模方法,该方法很少用在元建模中,而在比较研究中从未考虑过。贝叶斯神经网络方法是元建模方法,并与其他元建模方法进行了比较。还开发了一个简单的指南,用于根据样本质量优劣和性能要求选择候选元建模方法。

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