非线性时间序列的神经网络预测

Ahmed Tealab , Hesham Hefny , Amr Badr
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引用次数: 99

摘要

在预测时间序列时,根据线性行为对其进行分类是很重要的,线性时间序列仍然是学术和应用研究的前沿,人们经常发现简单的线性时间序列模型通常会使经济和金融数据的某些方面无法解释。现实生活中大多数时间序列具有自回归和遗传移动平均项的动态行为,这对使用神经网络等计算智能方法预测包含遗传移动平均项的非线性时间序列提出了挑战。很少有研究集中于预测包含移动平均项的非线性时间序列。在本研究中,我们证明了普通神经网络对具有移动平均项的非线性或动态时间序列的行为识别效率不高,因此预测能力较低。这导致了制定神经网络新模型的重要性,如深度学习神经网络,有或没有混合方法,如模糊逻辑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting of nonlinear time series using ANN

When forecasting time series, it is important to classify them according linearity behavior that the linear time series remains at the forefront of academic and applied research, it has often been found that simple linear time series models usually leave certain aspects of economic and financial data unexplained. The dynamic behavior of most of the time series in our real life with its autoregressive and inherited moving average terms issue the challenge to forecast nonlinear times series that contain inherited moving average terms using computational intelligence methodologies such as neural networks. It is rare to find studies that concentrate on forecasting nonlinear times series that contain moving average terms. In this study, we demonstrate that the common neural networks are not efficient for recognizing the behavior of nonlinear or dynamic time series which has moving average terms and hence low forecasting capability. This leads to the importance of formulating new models of neural networks such as Deep Learning neural networks with or without hybrid methodologies such as Fuzzy Logic.

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