Possible Reasons for Spurious Regression in the Econometric Model (Case Study of Imports in the United States of America)

Q4 Decision Sciences
Samer Muhammad Fakhr, Anissa Bouabid
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引用次数: 0

Abstract

Purpose: The research aims to identify statistical, econometric, and economic indicators to infer the problem of spurious regression.   Theoretical framework: The research used a descriptive and econometric approach to identify the dimensions of this problem and the most likely causes of its emergence.   Design/Methodology/Approach: The research estimated four equations, the first two are simple linear regressions (y, x1) and (y, x2), the third is a multiple linear regression equation (y, x1, x2), and the fourth is a double logarithmic regression equation for multiple linear regression. The results of the four equations were compared to assess the standard methods and explore spurious regression.   Findings: The research concluded with several findings, one of which is that a high value of the coefficient of determination (R2) in the absence of significance of the parameters is an indication of the problem of multicollinearity, and hence the possibility of spurious regression.   Research, Practical & Social implications: Spurious regression can lead to misleading conclusions about the relationships between economic variables, this can have negative consequences for economic policymaking and other decision-making processes. The research on spurious regression can help to improve the accuracy and reliability of economic analysis, which can benefit society as a whole.   Originality/Value: The paper could provide recommendations for how to avoid spurious regression in econometric models of imports. This could include recommendations for data collection, data preparation, and model specification.
计量经济学模型中出现虚假回归的可能原因(美利坚合众国进口案例研究)
目的:本研究旨在确定统计、计量经济学和经济指标,以推断虚假回归问题。理论框架:研究采用了描述性和计量经济学方法,以确定该问题的各个层面及其出现的最可能原因。设计/方法/途径:研究估计了四个方程,前两个是简单线性回归(y, x1)和(y, x2),第三个是多元线性回归方程(y, x1, x2),第四个是多元线性回归的双对数回归方程。对四个方程的结果进行了比较,以评估标准方法和探索虚假回归。研究结果研究得出了几项结论,其中之一是,在参数不显著的情况下,判定系数(R2)的高值表明存在多重共线性问题,因此有可能出现虚假回归。研究、实践和社会影响:虚假回归会导致对经济变量之间的关系得出误导性结论,从而对经济政策制定和其他决策过程产生负面影响。对虚假回归的研究有助于提高经济分析的准确性和可靠性,从而使整个社会受益。原创性/价值:论文可就如何避免进口计量经济学模型中的虚假回归提出建议。这可能包括数据收集、数据准备和模型规范方面的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Professional Business Review
International Journal of Professional Business Review Business, Management and Accounting-Business, Management and Accounting (miscellaneous)
自引率
0.00%
发文量
16
审稿时长
3 weeks
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