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Integrating Ridge-type regularization in fuzzy nonlinear regression

机译:在模糊非线性回归中整合岭型正则化

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In this paper, we deal with the ridge-type estimator for fuzzy nonlinear regression models using fuzzy numbers and Gaussian basis functions. Shrinkage regularization methods are used in linear and nonlinear regression models to yield consistent estimators. Here, we propose a weighted ridge penalty on a fuzzy nonlinear regression model, then select the number of basis functions and smoothing parameter. In order to select tuning parameters in the regularization method, we use the Hausdorff distance for fuzzy numbers which was first suggested by Dubois and Prade [8]. The cross-validation procedure for selecting the optimal value of the smoothing parameter and the number of basis functions are fuzzified to fit the presented model. The simulation results show that our fuzzy nonlinear modelling performs well in various situations. Mathematical subject classification: Primary: 62J86; Secondary: 62J07.
机译:在本文中,我们处理使用模糊数和高斯基函数的模糊非线性回归模型的岭型估计。在线性和非线性回归模型中使用收缩正则化方法来产生一致的估计量。在此,我们提出了一种基于模糊非线性回归模型的加权岭惩罚,然后选择基函数的数量和平滑参数。为了在正则化方法中选择调整参数,我们将Hausdorff距离用于模糊数,这是Dubois和Prade [8]首次提出的。选择用于选择平滑参数最佳值和基函数数量的交叉验证过程,以适应所提出的模型。仿真结果表明,我们的模糊非线性建模在各种情况下都表现良好。数学学科分类:小学:62J86;中学:62J07。

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