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An enhanced hybrid method for time series prediction using linear and neural network models

机译:基于线性和神经网络模型的时间序列预测的增强混合方法

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摘要

The need for improving the accuracy of time series prediction has motivated researchers to develop more efficient prediction models. The accuracy rates resulting from linear models such as linear regression (LR), exponential smoothing (ES) and autoregressive integrated moving average (ARIMA) are not high as they are poor in handling the nonlinear time series data. Neural network models are considered to be better in handling such nonlinear time series data. In the real-world problems, the time series data consist of complex linear and nonlinear patterns and it may be difficult to obtain high prediction accuracy rates using only linear or neural network models. Hybrid models which combine both linear and neural network models can be used to obtain high prediction accuracy rates. In this paper, we propose an enhanced hybrid model which indicates for a given input data which choice is better between the two options, namely, a linear-nonlinear combination or a nonlinear-linear combination. The appropriate combination is selected based on a linearity test of data. From the experimental results, it is found that the proposed hybrid model comprising linearnonlinear combination performs better than other models for the data that have a linear relationship. On the contrary, the hybrid model comprising nonlinear-linear combination performs better than other models for the data that have a nonlinear relationship.
机译:对提高时间序列预测的准确性的需求促使研究人员开发更有效的预测模型。由线性模型(例如线性回归(LR),指数平滑(ES)和自回归积分移动平均值(ARIMA))得出的准确率不高,因为它们在处理非线性时间序列数据方面较差。神经网络模型被认为在处理这种非线性时间序列数据方面更好。在实际问题中,时间序列数据由复杂的线性和非线性模式组成,仅使用线性或神经网络模型可能难以获得较高的预测准确率。结合了线性和神经网络模型的混合模型可用于获得较高的预测准确率。在本文中,我们提出了一种增强的混合模型,该模型指示对于给定的输入数据,在两个选项(线性-非线性组合或非线性-线性组合)中哪个选择更好。基于数据的线性测试选择适当的组合。从实验结果发现,所提出的包括线性非线性组合的混合模型对于具有线性关系的数据比其他模型表现更好。相反,对于具有非线性关系的数据,包含非线性-线性组合的混合模型的性能要优于其他模型。

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