Modeling Power Exponential Error Innovations with Autoregressive Process

A. A Oyinloye, O. J. Ayodele, V. O. Abifade
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Abstract

The regular gussian assumption of the error terms is employed in dynamic time series models when the underlying data are not normally distributed, this often results in incorrect parameter estimations and forecast error. As a result, this paper developed maximum likelihood method of estimation of parameters of an autoregressive model of order 2 [AR (2)] with power-exponential innovations. The performance of the parameters of AR (2) in comparison to normal error innovations was evaluated using the Akaike information criterion (AIC) and forecast performance metrics (RMSE and MAE). Both real data sets and simulated data with different sample sizes were used to validate the models. The results revealed that, it is more appropriate and efficient to model non-normal time series data using AR (2) exponential power error innovations.
基于自回归过程的功率指数误差创新模型
在基础数据非正态分布的动态时间序列模型中,误差项采用正则高斯假设,这往往会导致参数估计错误和预测误差。因此,本文采用幂指数创新方法,提出了2阶自回归模型[AR(2)]参数估计的极大似然方法。采用赤池信息准则(AIC)和预测性能指标(RMSE和MAE)对AR(2)参数与正态误差创新的性能进行了评价。采用不同样本量的真实数据集和模拟数据对模型进行了验证。结果表明,采用AR(2)指数功率误差创新方法对非正态时间序列数据进行建模更为合适和有效。
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