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Comparative Studies of Model Performance Based on Different Data Sampling Methods

机译:基于不同数据采样方法的模型性能比较研究

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This paper presents a comparative study on the effects of different data sampling methods to the performance of data-driven models.An engineering benchmark modeling problem is investigated,focused on which,three sampling methods,i.e.orthogonal Latin sampling,uniform design sampling and random sampling are used to generate the training data of different property.Six typical data-driven modeling techniques,which consist of artificial intelligent methods (least squares support vector machine,BP neural network and RBF neural network) and statistical methods (multiple linear regression,linear and nonlinear partial least squares regressions),are performed to make the comparison.The root mean square error (RMSE),R square (R2) and mean relative error (MRE) values are taken as the comparison criteria.The results reveal that data sampling and data property play a very key role in establishing an accurate data-driven model.
机译:本文对不同数据采样方法对数据驱动模型的性能影响进行了比较研究。研究了工程基准建模问题,重点研究了三种采样方法,即正交拉丁采样,均匀设计采样和随机采样。用于生成不同属性的训练数据。六种典型的数据驱动建模技术,包括人工智能方法(最小二乘支持向量机,BP神经网络和RBF神经网络)和统计方法(多元线性回归,线性和线性)。进行均方根误差(RMSE),R方差(R2)和均值相对误差(MRE)值作为比较标准。数据属性在建立准确的数据驱动模型中起着非常关键的作用。

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