分析尼日利亚金融部门与经济增长之间的关系:使用 BVAR、线性回归 (OLS) 和 PPML 模型的比较研究

Kingdom Nwuju, I. B. Lekara-Bayo, S. N. Nwanneako, Y. A. Da-Wariboko
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引用次数: 0

摘要

目的:本研究旨在分析尼日利亚金融部门与经济增长之间的复杂关系。本研究旨在通过使用三种不同的模型进行比较调查,从而对这种关系提供全面的见解:线性回归、泊松伪最大似然(PPML)和贝叶斯向量自回归(BVAR)。研究方法:研究采用了三种不同的模型,重点是 BVAR(2) 模型,并辅以各种诊断测试和稳定性评估。线性回归分析和泊松伪最大似然估计法(PPML)的加入增强了研究的深度,为特定金融部门变量对经济增长的影响提供了细致入微的见解。研究结果BVAR(2)模型是最佳选择,证明了其在捕捉动态互动方面的可靠性,并为决策者提供了一个强有力的工具。具体结果,如回归分析中 D(CPS)的显著负面影响和 PPML 的高 R 平方,为需要政策干预的领域提供了可操作的见解,并强调了金融部门对经济增长的巨大贡献。结论对模型性能的比较评估倾向于 BVAR 模型,为未来的研究和政策考虑提供了指导,为进一步的调查提供了可靠的框架。该研究的见解对于寻求通过对金融部门的战略干预来促进经济增长的政策制定者来说非常有价值。总之,摘要简明扼要地概括了尼日利亚金融部门与经济增长之间关系研究的目的、方法、结果和结论意义。
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Analysing the Nexus between the Financial Sector and Economic Growth in Nigeria: A Comparative Investigation using, BVAR, Linear Regression (OLS), and PPML Models
Aims: This study aims to analyze the complex relationship between the financial sector and economic growth in Nigeria. The study aims to provide comprehensive insights into this nexus by employing a comparative investigation using three distinct models: Linear Regression, Poisson Pseudo Maximum Likelihood (PPML), and Bayesian Vector Autoregression (BVAR). Methodology: The study then applied three different models, with a specific focus on the BVAR(2) model, supported by various diagnostic tests and stability assessments. The inclusion of Linear regression analysis and Poisson Pseudo Maximum Likelihood Estimator (PPML) enhances the depth of the study, providing nuanced insights into the impact of specific financial sector variables on economic growth. Results: The BVAR (2) model emerges as the optimal choice, demonstrating its reliability in capturing dynamic interactions and offering a powerful tool for policymakers. Specific results, such as the significant negative impact of D(CPS) in the regression analysis and the high R-squared in PPML, provide actionable insights into areas requiring policy interventions and underscore the substantial contribution of the financial sector to economic growth. Conclusion: The comparative assessment of model performances, favoring the BVAR model, guides future research and policy considerations, providing a reliable framework for further investigations. The study's insights are positioned as valuable for policymakers seeking to enhance economic growth through strategic interventions in the financial sector. Overall, the abstract succinctly encapsulates the aims, methodology, results, and concluding implications of the study on the nexus between the financial sector and economic growth in Nigeria.
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