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An improved fuzzy time series forecasting model using the differential evolution algorithm

机译:一种利用差分演化算法改进的模糊时间序列预测模型

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摘要

Fuzzy time series modeling has recently become an interesting topic to study. Among fuzzy time series models, the Abbasov-Mamedova (AM) model has advantages over the others because it can forecast the value that is outside the min-max range of the original data. However, the performance of the AM model strongly depends on three parameters that are user-defined. In previous studies, the optimal parameters of the fuzzy time series models have been identified with a global optimization method. Surprisingly, optimizing the parameters of the Abbasov and Mamedova model has not been solved in spite of its advantages over the others. This paper presents a new approach to improve the performance of AM model based on the evolutionary algorithm. Particularly, the objective function is calculated as the Mean absolute percentage error which will be minimized using the differential evolution (DE) algorithm. The experiments on Azerbaijan's population, Vietnam's GDP and rice production demonstrate the feasibility and applicability of the proposed methods.
机译:模糊时间序列建模最近成为一个有趣的学习话题。在模糊时间序列模型中,ABBASOV-MAMEAMEVA(AM)模型具有更好的优势,因为它可以预测原始数据的最小值范围之外的值。但是,AM模型的性能强烈取决于用户定义的三个参数。在先前的研究中,已经用全局优化方法识别了模糊时间序列模型的最佳参数。令人惊讶的是,尽管其优于其他优势,但尚未解决优化Abbasov和Mamameova模型的参数。本文介绍了一种新方法,以提高基于进化算法的AM模型的性能。特别地,客观函数被计算为使用差分演进(DE)算法最小化的平均绝对百分比误差。越南国内生产总值和水稻生产人口对阿塞拜疆人口的实验表明了所提出的方法的可行性和适用性。

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