Vector Autoregressive Model of Maize Production in Northern Region of Ghana

Dawuda Rasheed, S. K. Appiah
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Abstract

Agricultural growth plays a crucial role in the Comprehensive African Agriculture Development Programme (CAADP, 2009) agenda. The program recognizes that increasing agricultural productivity is essential for reducing poverty, meeting food production targets, and lowering production costs and food prices for the impoverished. This study aimed to develop two types of models. The first model employed a vector autoregressive (VAR) approach, which involved regressing the production of maize in one district against the production of maize in other districts at various lags. The second model utilized a VAR framework where the maize production in each district was regressed against the production of maize in other districts and the corresponding climate conditions at different lag periods. The available data spanned from 1968 to 2018 and were recorded on an annual basis. Six climatic variables were included in the analysis. A lag order of 3 was selected for the models. The results of the autocorrelation test using the portmanteau test indicated no serial autocorrelation across all lag periods. The test for normality revealed that the residuals followed a normal distribution. Additionally, there was no evidence of heteroscedasticity in the data. Furthermore, a Granger causality test was conducted on the selected districts to explore causal relationships. Variance decomposition analysis was performed to assess the variance relation in the data and understand the contribution of different factors. Based on adjusted R-squared, mean absolute error (MAE), and root mean squared error (RMSE) values, the models that incorporated climatic variables were found to be the most suitable for forecasting maize production in the selected districts. The VAR model, which captures the interdependencies between the variables, was utilized in this analysis. All variables in the VAR model were treated symmetrically, meaning that their relationships were considered equally important.
加纳北部地区玉米生产的向量自回归模型
农业增长在非洲农业综合发展计划(CAADP, 2009)议程中发挥着至关重要的作用。该计划认识到,提高农业生产力对于减少贫困、实现粮食生产目标、降低贫困人口的生产成本和粮食价格至关重要。本研究旨在建立两类模型。第一个模型采用向量自回归(VAR)方法,将一个地区的玉米产量与其他地区不同滞后的玉米产量进行回归。第二个模型利用VAR框架,将每个地区的玉米产量与其他地区的玉米产量和相应的气候条件在不同滞后期进行回归。现有数据从1968年到2018年,每年记录一次。分析中包括六个气候变量。模型的滞后阶数为3。使用组合检验的自相关检验结果表明,在所有滞后期均无序列自相关。正态性检验表明,残差服从正态分布。此外,数据中没有异方差的证据。此外,对所选地区进行格兰杰因果检验,探讨因果关系。进行方差分解分析,评估数据中的方差关系,了解不同因素的贡献。通过调整后的r平方、平均绝对误差(MAE)和均方根误差(RMSE)值,发现纳入气候变量的模型最适合预测所选地区的玉米产量。VAR模型捕捉变量之间的相互依赖关系,在此分析中被使用。VAR模型中的所有变量都被对称地处理,这意味着它们的关系被认为是同等重要的。
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