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A new linear & nonlinear artificial neural network model for time series forecasting

机译:线性和非线性人工神经网络模型的时间序列预测

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摘要

Artificial neural network approach is a well-known method that is a useful tool for time series forecasting. Since real life time series can generally contain both linear and nonlinear components, hybrid approaches which can model both these two components have also been proposed in the literature. The hybrid approaches suggested in the literature generally have two phases. In the first phase, linear component of time series is modeled with a linear model. Then, nonlinear component is modeled by utilizing a nonlinear model in the second phase. In two-phase methods, it is assumed that time series has only a linear structure in the first phase. Also, it is assumed that time series has only a nonlinear structure in the second phase. Therefore, this causes model specification error. In order to overcome this problem, a novel neural network model, which consists of both linear and nonlinear structures, is proposed in this study. The proposed model considers that time series has both linear and nonlinear components. Multiplicative and Me Culloch-Pitts neuron structures are employed for nonlinear and linear parts of the proposed model, respectively. In addition, the modified particle swarm optimization method is used to train the proposed neural network model. In order to show the performance of the proposed approach, it is applied to three real life time series and obtained results are compared to those obtained from other approaches available in the literature. It is observed that the proposed model gives the best forecasts for these three time series.
机译:人工神经网络方法是一种众所周知的方法,是用于时间序列预测的有用工具。由于现实生活中的时间序列通常可以同时包含线性和非线性成分,因此在文献中还提出了可以对这两个成分进行建模的混合方法。文献中建议的混合方法通常分为两个阶段。在第一阶段,使用线性模型对时间序列的线性分量进行建模。然后,在第二阶段利用非线性模型对非线性分量进行建模。在两阶段方法中,假设时间序列在第一阶段仅具有线性结构。此外,假设时间序列在第二阶段仅具有非线性结构。因此,这会导致模型规格错误。为了克服这个问题,本研究提出了一种由线性和非线性结构组成的新型神经网络模型。所提出的模型认为时间序列同时具有线性和非线性成分。分别将乘法和Me Culloch-Pitts神经元结构用于所提出模型的非线性和线性部分。另外,采用改进的粒子群优化方法对提出的神经网络模型进行训练。为了显示所提出方法的性能,将其应用于三个现实生活时间序列,并将获得的结果与从文献中可用的其他方法获得的结果进行比较。可以看出,提出的模型对这三个时间序列提供了最佳预测。

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