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Fuzzy time series forecasting with a novel hybrid approach combining fuzzy c-means and neural networks

机译:结合模糊c均值和神经网络的新型混合方法进行模糊时间序列预测

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摘要

In recent years, time series forecasting studies in which fuzzy time series approach is utilized have got more attentions. Various soft computing techniques such as fuzzy clustering, artificial neural networks and genetic algorithms have been used in fuzzy time series method to improve the method. While fuzzy clustering and genetic algorithms are being used for fuzzification, artificial neural networks method is being preferred for using in defining fuzzy relationships. In this study, a hybrid fuzzy time series approach is proposed to reach more accurate forecasts. In the proposed hybrid approach, fuzzy c-means clustering method and artificial neural networks are employed for fuzzification and defining fuzzy relationships, respectively. The enrollment data of University of Alabama is forecasted by using both the proposed method and the other fuzzy time series approaches. As a result of comparison, it is seen that the most accurate forecasts are obtained when the proposed hybrid fuzzy time series approach is used.
机译:近年来,利用模糊时间序列方法的时间序列预测研究受到了越来越多的关注。模糊时间序列方法中使用了各种软计算技术,例如模糊聚类,人工神经网络和遗传算法,以改进该方法。当模糊聚类和遗传算法被用于模糊化时,人工神经网络方法被优选用于定义模糊关系。在这项研究中,提出了一种混合模糊时间序列方法以达到更准确的预测。在提出的混合方法中,模糊c均值聚类方法和人工神经网络分别用于模糊化和定义模糊关系。通过使用所提出的方法和其他模糊时间序列方法来预测阿拉巴马大学的入学数据。作为比较的结果,可以看出,当使用所提出的混合模糊时间序列方法时,可以获得最准确的预测。

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