Kapılı Tekrarlayan Hücreler Tabanlı Bulanık Zaman Serileri Tahminleme Modeli

Serdar Arslan
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Abstract

Time series forecasting has lots of applications in various industries such as weather, business, retail and energy consumption forecasting. Accurate prediction in these applications is very important and also difficult task because of complexity and uncertainty of time series. Nowadays, using deep learning methods is a popular approach in time series forecasting and shows better performance than classical methods. However, in the literature, there are few studies which use deep learning methods in fuzzy time series (FTS) forecasting. In this study, we propose a novel FTS forecasting model which is based upon hybridization of Recurrent Neural Networks with FTS to deal with complexity and also uncertanity of these series. The proposed model utilizes Gated Recurrent Unit (GRU) to make prediction by using combination of membership values and also past value from original time series data as model input and produce real forecast value. Moreover, the proposed model can handle first order fuzzy relations as well as high order ones. In experiments, we have compared our model results with those of state-of-art methods by using two real world datasets; The Taiwan Stock Exchange Capitalization Weighted Stock Index (TAIEX) and Nikkei Stock Average. The results indicate that our model outperforms or performs similar to other methods. The proposed model is also validated by using Covid-19 active case dataset and shows better performance than Long Short-term Memory (LSTM) networks.
时间序列预测在天气、商业、零售和能源消耗预测等各个行业都有广泛的应用。由于时间序列的复杂性和不确定性,在这些应用中准确预测是非常重要的,也是一项困难的任务。目前,使用深度学习方法进行时间序列预测是一种比较流行的方法,并且表现出比经典方法更好的性能。然而,在文献中,很少有研究将深度学习方法用于模糊时间序列(FTS)预测。在本研究中,我们提出了一种新的基于递归神经网络与FTS杂交的FTS预测模型,以处理这些序列的复杂性和不确定性。该模型利用门控循环单元(GRU)将原始时间序列数据中的隶属度值和过去值的组合作为模型输入进行预测,并产生真实的预测值。该模型既能处理一阶模糊关系,也能处理高阶模糊关系。在实验中,我们通过使用两个真实世界的数据集,将我们的模型结果与最先进的方法进行了比较;台湾证券交易所资本加权股票指数(TAIEX)及日经股票平均指数。结果表明,我们的模型优于或类似于其他方法。利用Covid-19活动病例数据对该模型进行了验证,结果表明该模型的性能优于长短期记忆(LSTM)网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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