模糊桥回归模型仿真估计

IF 0.3 Q4 ECONOMICS
Rawya Emad Kareem, M. Jasim Mohammed
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引用次数: 0

摘要

在处理模糊数据变量时,主要的问题是不能用模糊最小二乘估计法(FLSE)来表示数据,在多重共线性问题存在的情况下,会对该方法的有效性给出错误的估计。为了克服这一问题,采用模糊桥回归估计(FBRE)方法对三角模糊数的模糊线性回归模型进行估计。此外,当模型的输入变量、输出变量和参数被模糊化时,可以利用方差膨胀因子来检测模糊数据中的多重共线性问题。通过模拟实验和不同样本量(20、40、80和160),采用标准均方误差对结果进行比较。通过模糊桥回归模型实现了均方误差(MSE)的最小值,表明了该模型的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Bridge Regression Model Estimating via Simulation
      The main problem when dealing with fuzzy data variables is that it cannot be formed by a model that represents the data through the method of Fuzzy Least Squares Estimator (FLSE) which gives false estimates of the invalidity of the method in the case of the existence of the problem of multicollinearity. To overcome this problem, the Fuzzy Bridge Regression Estimator (FBRE) Method was relied upon to estimate a fuzzy linear regression model by triangular fuzzy numbers. Moreover, the detection of the problem of multicollinearity in the fuzzy data can be done by using Variance Inflation Factor when the inputs variable of the model crisp, output variable, and parameters are fuzzed. The results were compared using standard mean squares error via simulated experiments and taking different sample sizes (20, 40, 80, and 160). The model's superiority was shown by achieving the least value of the mean squares error (MSE(, which indicated by the fuzzy bridge regression model.  
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