评估索马里农业生产力的决定因素:ARDL模型的应用

Q3 Social Sciences
Elmi Hassan Samatar
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引用次数: 0

摘要

本研究在考虑五个宏观经济变量的同时,深入探讨了提高农业生产率的因素。研究变量以农业生产率为因变量,以农业就业、资本形成总额、耕地面积和降雨量为自变量。本文采用自回归分布滞后(ARDL)模型,研究了1991 - 2020年索马里农业生产力的决定因素。使用协整的边界检验方法验证了模型变量之间的协整。研究发现,农业就业对农业生产力有短期和长期的积极影响。同样,研究发现,无论是在短期还是长期,总资本形成和可耕地可得性对农业生产率都有有利的影响。此外,该研究表明,降雨与农业生产力之间存在短期和长期的正相关关系,尽管这种相关性在5%的水平上统计上微不足道。从长远来看,可利用耕地的数量对农业生产力有积极的影响。然而,在短期内,这个行列式却起着相反的作用。根据研究结果,该研究建议政府、政策制定者和其他有关当局优先考虑技术创新和气候智能型农业系统,以提高部门生产率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the determinants of agricultural productivity in Somalia: An application of an ARDL model
This study delves into the factors that boost agricultural productivity while taking five macroeconomic variables into account. The investigated variables are agricultural productivity, which is used as the dependent variable, while employment in agriculture, gross capital formation, arable land, and rainfall are the independent variables. Employing an autoregressive distributed lags (ARDL) model, this paper examines the determinants of agricultural productivity in Somalia from 1991 to 2020. The cointegration between the model’s variables was verified using a bounds-testing approach to cointegration. Employment in agriculture was found to have both a short-run and long-run positive impact on agricultural productivity. Similarly, it was discovered that both gross capital formation and the availability of arable land had a favorable influence on agricultural productivity in the short and long run. Additionally, the study indicated a positive short-run and long-run correlation between rainfall and agricultural productivity, although this correlation is statistically insignificant at a five percent level. In the long run, the amount of available arable land has a positive impact on agricultural productivity. However, in the short run, this determinant has the opposite effect. Based on the results, the study advises the government, policymakers, and other concerned authorities to prioritize technological innovation and climate-smart agricultural systems to boost sector productivity.
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来源期刊
Asian Journal of Agriculture and Rural Development
Asian Journal of Agriculture and Rural Development Social Sciences-Geography, Planning and Development
CiteScore
1.30
自引率
0.00%
发文量
28
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