{"title":"Modeling and Forecasting Unemployment Rate in Tanzania: An ARIMA Approach","authors":"P. Tengaa, Y. M. Maiga, Amosi Mwasota","doi":"10.32602/jafas.2023.033","DOIUrl":null,"url":null,"abstract":"Purpose: This study aims to develop a reliable forecasting approach \nfor Tanzania's unemployment rate and provide policymakers with \nan effective tool for decision-making. Unemployment forecasting is\nvital for informed policymaking, particularly in countries like \nTanzania.\nMethodology: This study employs a quantitative research design \nand adopts Box Jenkin's methodology and the ARIMA \n(AutoRegressive Integrated Moving Average) model for \nunemployment forecasting in Tanzania. The entire available dataset \nfor the specified period is utilized, employing a non-probability \nsampling technique. Diagnostic tests, including ACF (AutoCorrelation \nFunction), PACF (Partial AutoCorrelation Function), and unit root \nanalysis, are conducted to guide the optimal model selection. \nDifferencing addresses non-stationarity in the time series data by \nremoving trend and seasonality effects. The optimal model selection\nis based on criteria such as AIC (Akaike Information Criterion), \nSchwartz, and Hannan-Quinn.\nFindings: The study finds that the ARIMA (3,1,4) model \ndemonstrates superior performance in forecasting the \nunemployment rate in Tanzania. Diagnostic checks validate the \nadequacy of the model, revealing white noise residuals. The forecasts \nindicate a consistent downward trend in unemployment rates over \nthe next nine years, suggesting potential labour market \nimprovements in Tanzania. These findings enhance our \nunderstanding of Tanzania's unemployment dynamics and provide \nvaluable insights for policymakers.\nOriginality/Value: The study lies in its application of Box Jenkin's \nmethodology and the ARIMA model to unemployment forecasting in \nTanzania. By utilizing the entire available dataset and employing \ndiagnostic tests for model selection, the study enhances the \nreliability of the forecasting approach. The study offers policymakers \nan informed decision-making tool by providing accurate forecasts \nand capturing underlying trends.","PeriodicalId":366129,"journal":{"name":"journal of accounting finance and auditing studies (JAFAS)","volume":"2 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"journal of accounting finance and auditing studies (JAFAS)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.32602/jafas.2023.033","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
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.