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Forecasting Neural Network-Based Fuzzy Time Series with Different Neural Network Models

机译:不同神经网络模型的基于神经网络的模糊时间序列预测

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Fuzzy approach and artificial neural networks become effective tool for researchers by forecasting fuzzy time series. The relation of these has advantage to improve forecasting performance especially in handling nonlinear systems. Hence, in this study we aimed to handle a nonlinear problem to apply neural network-based fuzzy time series model. Differing from previous studies, we used various degrees of membership in establishing fuzzy relationships and we performed different neural network models to improve forecasting performance. To demonstrate comparison between these models we used a data set of exchange rate of Turkish Liras (TL) to Euro for the years 2005-2009. Empirical results show that the multilayer perceptron is the best to forecast fuzzy time series in most commonly used artificial neural network models.
机译:通过预测模糊时间序列,模糊方法和人工神经网络已成为研究人员的有效工具。这些之间的关系有利于提高预测性能,尤其是在处理非线性系统中。因此,在本研究中,我们旨在处理非线性问题,以应用基于神经网络的模糊时间序列模型。与以前的研究不同,我们在建立模糊关系时使用了不同程度的隶属度,并且执行了不同的神经网络模型来提高预测性能。为了证明这些模型之间的比较,我们使用了2005-2009年土耳其里拉(TL)对欧元的汇率数据集。实验结果表明,在最常用的人工神经网络模型中,多层感知器是预测模糊时间序列的最佳方法。

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