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首页> 外文期刊>British Journal of Mathematics & Computer Science >Modeling the Autocorrelated Errors in Time Series Regression: A Generalized Least Squares Approach
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Modeling the Autocorrelated Errors in Time Series Regression: A Generalized Least Squares Approach

机译:时间序列回归中的自相关误差建模:广义最小二乘法

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This study considered Gross Domestic Product (N’ Billion) as the dependent variable (denoted by Yt), the Money Supply (N’ Billion) as the independent variable (denoted by X1t ) and the Credit to Private Sector as another independent variable (denoted by X2t). The data were obtained from the Central Bank of Nigeria Statistical Bulletin for a period ranging from 1981 to 2014. Each series consists of 34 observations. The study aimed at applying the generalized least squares to overcome the weaknesses of ordinary least squares to ensure the efficiency of the model parameters, unbiased standard errors, valid t-statistics and p-values, and to account for the presence of autocorrelation. Based on ordinary least squares fitted regression model, our findings revealed that X1t and X2t contributed significantly to Yt and were able to explain about 67.95% of the variance in?Yt. However, the diagnosis of the fitted regression model using Breusch and Godfrey test, ACF, and PACF showed that the residuals are correlated, hence the need for generalized least squares. Further findings from the results of generalized least squares estimation revealed that their estimates are better and that the additional information in the error terms (autocorrelation) could be explained and captured by AR (2). Thus, it could be deduced that generalized least squares provides better estimates than the ordinary least squares and also accounts for autocorrelation in time series regression analysis.
机译:这项研究将国内生产总值(N'Billion)作为因变量(以Y t 表示),将货币供给(N'Billion)作为自变量(X 1t < / sub>)和贷记给私营部门作为另一个自变量(用X 2t 表示)。数据从1981年至2014年期间从尼日利亚中央银行统计公报获得。每个系列包含34个观察值。该研究旨在应用广义最小二乘法克服普通最小二乘的缺点,以确保模型参数,无偏标准误差,有效t统计量和p值的效率,并考虑自相关的存在。基于普通最小二乘拟合回归模型,我们的发现表明X 1t 和X 2t 对Y t 的贡献很大,并且能够解释Y t 的方差为67.95%。但是,使用Breusch和Godfrey检验,ACF和PACF对拟合回归模型的诊断表明,残差是相关的,因此需要广义最小二乘法。广义最小二乘估计结果的进一步发现表明,它们的估计更好,并且误差项(自相关)中的其他信息可以由AR解释和捕获(2)。因此,可以推断出广义最小二乘比普通最小二乘提供了更好的估计,并且在时间序列回归分析中也考虑了自相关。

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