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An Econometric Time Series GDP Model Analysis: Statistical Evidences and Investigations
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作者 habib ahmed elsayir 《Journal of Applied Mathematics and Physics》 2018年第12期2635-2649,共15页
This article aims to provide an analysis for a time series data of gross domestic product (GDP) of the Sudan. An econometric time series model with macroeconomic variables is conducted. Since a non-stationary time ser... This article aims to provide an analysis for a time series data of gross domestic product (GDP) of the Sudan. An econometric time series model with macroeconomic variables is conducted. Since a non-stationary time series must be made stationary, some statistical tests are followed so that the time series become stationary series. After applying these tests, the time series became stationary and integrated of order I. Box-Jenkins procedure is used to determine ARMA. OLS is used to estimate the models parameters. Performances chosen ARIMA model are verified on the basis of classical statistical tests and forecasting. The model features are interpreted on the basis of standard measures of forecasting performance. 展开更多
关键词 ARIMA Model GDP Box-Jenkins MODELS STATIONARY Time SERIES
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Residual Analysis for Auto-Correlated Econometric Model
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作者 habib ahmed elsayir 《Open Journal of Statistics》 2019年第1期48-61,共14页
The aim of this article is to provide residual analysis for a time series data of Gross Domestic Product (GDP) of the Sudan. An econometric time series model with macroeconomic variables is conducted to examine the go... The aim of this article is to provide residual analysis for a time series data of Gross Domestic Product (GDP) of the Sudan. An econometric time series model with macroeconomic variables is conducted to examine the goodness of fit using residual. Many statistical tests are used in time series models in order to make it a stationary series. After applying these tests, the time series became stationary and integrated;thus, Box-Jenkins procedure is used for the determination of ARIMA, AR (0,1,0) in this study. This identified technique is useful for analyzing this study. 展开更多
关键词 ARIMA Model AUTOCORRELATION GDP RESIDUAL Analysis
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