Modeling and Forecasting Unemployment Rate in Tanzania: An ARIMA Approach

P. Tengaa, Y. M. Maiga, Amosi Mwasota
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Abstract

Purpose: This study aims to develop a reliable forecasting approach for Tanzania's unemployment rate and provide policymakers with an effective tool for decision-making. Unemployment forecasting is vital for informed policymaking, particularly in countries like Tanzania. Methodology: This study employs a quantitative research design and adopts Box Jenkin's methodology and the ARIMA (AutoRegressive Integrated Moving Average) model for unemployment forecasting in Tanzania. The entire available dataset for the specified period is utilized, employing a non-probability sampling technique. Diagnostic tests, including ACF (AutoCorrelation Function), PACF (Partial AutoCorrelation Function), and unit root analysis, are conducted to guide the optimal model selection. Differencing addresses non-stationarity in the time series data by removing trend and seasonality effects. The optimal model selection is based on criteria such as AIC (Akaike Information Criterion), Schwartz, and Hannan-Quinn. Findings: The study finds that the ARIMA (3,1,4) model demonstrates superior performance in forecasting the unemployment rate in Tanzania. Diagnostic checks validate the adequacy of the model, revealing white noise residuals. The forecasts indicate a consistent downward trend in unemployment rates over the next nine years, suggesting potential labour market improvements in Tanzania. These findings enhance our understanding of Tanzania's unemployment dynamics and provide valuable insights for policymakers. Originality/Value: The study lies in its application of Box Jenkin's methodology and the ARIMA model to unemployment forecasting in Tanzania. By utilizing the entire available dataset and employing diagnostic tests for model selection, the study enhances the reliability of the forecasting approach. The study offers policymakers an informed decision-making tool by providing accurate forecasts and capturing underlying trends.
坦桑尼亚失业率建模与预测:ARIMA方法
目的:本研究旨在建立一种可靠的坦桑尼亚失业率预测方法,为政策制定者提供有效的决策工具。失业预测对于明智的决策至关重要,尤其是在坦桑尼亚这样的国家。方法:本研究采用定量研究设计,采用Box Jenkin的方法和ARIMA (AutoRegressive Integrated Moving Average)模型对坦桑尼亚的失业率进行预测。采用非概率抽样技术,利用指定时期的全部可用数据集。诊断测试包括自相关函数(ACF)、部分自相关函数(PACF)和单位根分析,以指导最优模型的选择。差分通过消除趋势和季节性影响来解决时间序列数据中的非平稳性。最优模型选择基于AIC(赤池信息标准)、Schwartz和Hannan-Quinn等标准。结果:研究发现,ARIMA(3,1,4)模型在预测坦桑尼亚失业率方面表现优异。诊断检查验证模型的充分性,显示白噪声残差。这些预测表明,未来九年失业率将持续下降,这表明坦桑尼亚的劳动力市场可能会有所改善。这些发现增强了我们对坦桑尼亚失业动态的理解,并为政策制定者提供了有价值的见解。独创性/价值:本研究将Box Jenkin的方法和ARIMA模型应用于坦桑尼亚的失业预测。通过利用整个可用数据集,并采用诊断测试进行模型选择,提高了预测方法的可靠性。该研究通过提供准确的预测和捕捉潜在趋势,为决策者提供了一个知情的决策工具。
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