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A variable spread fuzzy linear regression model with higher explanatory power and forecasting accuracy

机译:具有较高解释力和预测精度的可变扩展模糊线性回归模型

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Fuzzy regression models have been applied to operational research (OR) applications such as forecasting. Some of previous studies on fuzzy regression analysis obtain crisp regression coefficients for eliminating the problem of increasing spreads for the estimated fuzzy responses as the magnitude of the independent variable increases; however, they still cannot cope with the situation of decreasing or variable spreads. This paper proposes a three-phase method to construct the fuzzy regression model with variable spreads to resolve this problem. In the first phase, on the basis of the extension principle, the membership functions of the least-squares estimates of regression coefficients are constructed to conserve completely the fuzziness of observations. In the second phase, then they are defuzzified by the center of gravity method to obtain crisp regression coefficients. In the third phase, the error terms of the proposed model are determined by setting each estimated spread equals its corresponding observed spread. Furthermore, the Mamdani fuzzy inference system is adopted for improving the accuracy of its forecasts. Compared to the previous studies, the results from five examples and an application example of Japanese house prices show that the proposed fuzzy linear regression model has higher explanatory power and forecasting performance. (c) 2008 Elsevier Inc. All rights reserved.
机译:模糊回归模型已应用于运筹学(OR)应用,例如预测。先前有关模糊回归分析的一些研究获得了清晰的回归系数,从而消除了随着自变量大小的增加,所估计的模糊响应的价差增加的问题。但是,它们仍然无法应付点差减少或变化的情况。为解决这一问题,本文提出了一种三相方法来构造具有可变扩展的模糊回归模型。在第一阶段,根据扩展原理,构建回归系数的最小二乘估计的隶属函数,以完全保留观测值的模糊性。在第二阶段,然后通过重心方法对它们进行去模糊处理以获得清晰的回归系数。在第三阶段,通过将每个估计的价差设置为等于其相应的观察价差来确定所提议模型的误差项。此外,采用了Mamdani模糊推理系统来提高其预测的准确性。与先前的研究相比,从五个实例和一个日本房价的应用实例得出的结果表明,所提出的模糊线性回归模型具有更高的解释力和预测性能。 (c)2008 Elsevier Inc.保留所有权利。

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