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A new deep intuitionistic fuzzy time series forecasting method based on long short-term memory

机译:一种基于长短期记忆的新型深度直观模糊时间序列预测方法

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摘要

In recent years, deep artificial neural networks can have better forecasting performance than many other artificial neural networks. The long short-term memory (LSTM) is one of the deep artificial neural networks. There have been a few fuzzy time series forecasting model based on LSTM in the literature. However, LSTM has not been used in an intuitionistic fuzzy time series (IFTS) forecasting method until now. In this paper, determining the fuzzy relations is made by using the LSTM artificial neural network and so, a new intuitionistic fuzzy time series forecasting method based on LSTM is proposed. In the proposed method, obtaining the membership and non-membership values is performed by using intuitionistic fuzzy c-means. Then, the inputs of the LSTM are merged membership and non-membership values by a minimum operator. In this way, lagged crisp values are inputs of the long short-term memory. So, the proposed method is a high-order IFTS model. The architecture of the LSTM artificial neural network includes multiple inputs and a single output. The proposed method and some other methods in the literature are applied to the Giresun Temperature data and the Nikkei 225 stock exchange time series, and the forecasting performance of these methods is compared.
机译:近年来,深度人工神经网络可以比许多其他人工神经网络具有更好的预测性能。长短期记忆(LSTM)是深度人工神经网络之一。基于LSTM在文献中有一些模糊时间序列预测模型。然而,直到现在,LSTM尚未用于直觉模糊时间序列(IFTS)预测方法。在本文中,提出了一种基于LSTM的新的直观模糊时间序列预测方法来确定模糊关系。在所提出的方法中,通过使用直觉模糊C-inse来获取成员资格和非隶属度值。然后,LSTM的输入由最小运算符合并成员身份和非成员资格值。以这种方式,滞后的清晰值是长短短期内存的输入。因此,所提出的方法是一种高阶IFTS模型。 LSTM人工神经网络的架构包括多个输入和单个输出。文献中所提出的方法和一些其他方法应用于GiresUn温度数据和Nikkei 225证券交易所时间序列,并比较了这些方法的预测性能。

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