Forecasting In One-Dimensional And Generalized Integrated Autoregressive Bilinear Time Series Models

Jf Ofo
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Abstract

In this paper, forecast of one-dimensional integrated autoregressive bilinear is compared with forecast of generalized integrated autoregressive bilinear model. We describe the method for estimation of these models and the forecast. It is also pointed out that for this class of non-linear time series models; it is possible to obtain optimal forecast. The estimation technique is illustrated with respect to a time series, and the optimal forecast of these time series are calculated. A comparison of these forecasts is made using the two models under study. The mean square error for forecast in generalized integrated autoregressive bilinear model is smaller than the mean square error for forecast in one-dimensional integrated autoregressive bilinear model. Though the two models are adequate for forecast when compared with the real series but forecast with generalized integrated autoregressive bilinear model is more adequate. Keywords: Optimal Forecast, Non-Linear Time Series Models, Bilinear Models, Estimation Technique, Mean Square Error.
一维广义积分自回归双线性时间序列模型的预测
本文将一维积分自回归双线性模型的预测与广义积分自回归双线性模型的预测进行了比较。我们描述了这些模型的估计方法和预测。同时指出,对于这类非线性时间序列模型;获得最优预报是可能的。以时间序列为例说明了估计技术,并计算了这些时间序列的最优预测。用所研究的两种模型对这些预测结果进行了比较。广义积分自回归双线性模型预报的均方误差小于一维积分自回归双线性模型预报的均方误差。虽然与实际序列相比,这两种模型的预测能力较强,但广义积分自回归双线性模型的预测能力更强。关键词:最优预测,非线性时间序列模型,双线性模型,估计技术,均方误差
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