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A fuzzy additive regression model with exact predictors and fuzzy responses

机译:一种模糊添加剂回归模型,具有精确的预测因子和模糊响应

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摘要

Fuzzy regression analysis is aimed at modeling the relationship between a set of fuzzy responses and a set of non-fuzzy/fuzzy predictors. However, compared to parametric methods, nonparametric regression often provides a very flexible approach to exploring the relationship between a response and the associated predictors without specifying a parametric model. In this paper, a novel fuzzy additive regression model with non-fuzzy predictors and fuzzy responses was proposed. For this purpose, a back-fitting stepwise regression approach with kernel smoothing was introduced to estimate a fuzzy smooth function corresponding to each predictor. An extended cross-validation criterion was also utilized to evaluate the unknown bandwidths. Some common goodness-of-fit criteria were employed to evaluate the performance of the proposed method. Effectiveness of the developed method was demonstrated through four numerical examples including two simulation studies based on three common kernels. The proposed method was further compared with several conventional fuzzy linear/nonlinear regression models, clearly indicating superior accuracy of the proposed model over other methods. Thus, it can be successfully applied to improve the prediction accuracy and interpretability of the fuzzy regression models for real-life applications in the context of intelligence systems. (C) 2020 Elsevier B.V. All rights reserved.
机译:模糊回归分析旨在建模一组模糊响应与一组非模糊/模糊预测因子之间的关系。然而,与参数方法相比,非参数回归通常提供一种非常灵活的方法来探索响应与相关联的预测器之间的关系而不指定参数模型。本文提出了一种具有非模糊预测因子和模糊反应的新型模糊添加剂回归模型。为此目的,引入了具有内核平滑的逐步回归方法,以估计与每个预测器对应的模糊平滑函数。扩展的交叉验证标准也用于评估未知的带宽。采用一些常见的拟合标准来评估所提出的方法的性能。通过四个数值示例证明了开发方法的有效性,包括基于三个常见核的两种模拟研究。进一步与几种常规模糊线性/非线性回归模型相比,该方法进一步比较,清楚地表明所提出的模型的卓越精度。因此,可以成功地应用于提高智能系统背景下的真实应用模糊回归模型的预测准确性和可解释性。 (c)2020 Elsevier B.V.保留所有权利。

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