Research Article | | Peer-Reviewed

Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques

Received: 21 October 2024     Accepted: 18 November 2024     Published: 18 December 2024
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Abstract

This study conducts a comprehensive analysis exploring the relationship between key macroeconomic indicators and the unemployment rate, alongside evaluating the predictive accuracy of modern regression models. The correlation analysis examines the association between unemployment rate percentages and five macroeconomic variables: real Gross Domestic Product (GDP) growth, gross public debt as a percentage of GDP, population size, government revenue as a percentage of GDP, and government expenditure as a percentage of GDP. The results highlight significant correlations, particularly the strong positive relationship between unemployment rates and gross public debt (% of GDP) (0.8417), while real GDP growth shows a weak correlation (0.0783), indicating that debt levels may be a more crucial determinant of unemployment variations in this context. Additionally, a comparison of modern regression models, namely Support Vector Regression (SVR), Neural Network Regression, and Bayesian Regression, is conducted based on their performance metrics: Mean Absolute Error (MAE), Root Mean Square Error (RMSE), R-Squared, Akaike Information Criterion (AIC), and Bayesian Information Criterion (BIC). Among the models, Support Vector Regression outperforms the others, with the lowest MAE (0.0823), RMSE (0.0878), and the highest R-Squared value (0.9915), along with notably favourable AIC (-100.2072) and BIC (-69.4268) scores. Neural Network Regression also delivers competitive performance with a slightly higher MAE and RMSE but a similarly strong R-Squared (0.9887). In contrast, Bayesian Regression exhibits weaker predictive power with higher error metrics (MAE = 0.2579, RMSE = 0.3109) and a significantly lower R-Squared (0.8806), AIC (28.0408), and BIC (36.8352). These findings underscore the efficacy of SVR in predictive modelling for macroeconomic datasets, suggesting its suitability for unemployment rate forecasting.

Published in American Journal of Theoretical and Applied Statistics (Volume 13, Issue 6)
DOI 10.11648/j.ajtas.20241306.16
Page(s) 242-254
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Modelling, Machine Learning, Kenya, Unemployment Trends

References
[1] Barro, R. J., & Gordon, D. B. (1983). Rules, discretion and reputation in a model of monetary policy. Journal of Monetary Economics, 12(1), 101-121.
[2] Christiano, L. J., Eichenbaum, M., & Evans, C. L. (1999, January 1). Monetary policy shocks: What have we learned and to what end? ScienceDirect; Elsevier.
[3] Davis, S. J. (2012). Variations in the wake of labor reallocation. Carnegie-Rochester Conference Series on Public Policy, 27, 335-402. North-Holland.
[4] Edward, S. (2007). How useful is Okun’s law? Economic Review, 73-103.
[5] Friedman, M. (2010). Quantity theory of money. MonetaryEconomics, 299-338.
[6] Hu, X. (2017). Support vector machine and its application to regression and classification.
[7] Karatekin, K., Gocer, I., & Yazar, E. (2015). The relationship between youth unemployment and economic growth in Central and Eastern European countries.
[8] Meyer, B. D. (1990). Unemployment insurance and unemployment spells. Econometrica, 58(4), 757.
[9] Mishkin, F. (2004). Why the Federal Reserve should adopt inflation targeting. International Finance, 7(1), 117-127.
[10] Moses, V. (2019). Does Okun’s law on cyclical unemployment apply in Kenya? International Journal of Current Research, 1765-1770.
[11] Pollin, R., Mwangi wa G˜ith˜inji, & Heintz, J. (2008). An employment-targeted economic program for Kenya. Edward Elgar Publishing.
[12] Ryan, T. C. I. (2002). Policy timeline and time series data for Kenya.
[13] Seyfried, W. (2004). Examining the relationship between employment and economic growth in the ten largest states. Southwestern Economic Review, 1-12.
[14] Sine, W. D. (2010). Institutions and entrepreneurship. RESEARCH in the SOCIOLOGY of WORK, 21, 1-26.
[15] Smola, A. J., & Schölkopf, B. (2004). A tutorial on support vector regression. Statistics and Computing, 14(3), 199-222.
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  • APA Style

    Opondo, R., Bundi, D., Weke, P. (2024). Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques. American Journal of Theoretical and Applied Statistics, 13(6), 242-254. https://doi.org/10.11648/j.ajtas.20241306.16

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    ACS Style

    Opondo, R.; Bundi, D.; Weke, P. Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques. Am. J. Theor. Appl. Stat. 2024, 13(6), 242-254. doi: 10.11648/j.ajtas.20241306.16

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    AMA Style

    Opondo R, Bundi D, Weke P. Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques. Am J Theor Appl Stat. 2024;13(6):242-254. doi: 10.11648/j.ajtas.20241306.16

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  • @article{10.11648/j.ajtas.20241306.16,
      author = {Reuben Opondo and Davis Bundi and Patrick Weke},
      title = {Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques},
      journal = {American Journal of Theoretical and Applied Statistics},
      volume = {13},
      number = {6},
      pages = {242-254},
      doi = {10.11648/j.ajtas.20241306.16},
      url = {https://doi.org/10.11648/j.ajtas.20241306.16},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajtas.20241306.16},
      abstract = {This study conducts a comprehensive analysis exploring the relationship between key macroeconomic indicators and the unemployment rate, alongside evaluating the predictive accuracy of modern regression models. The correlation analysis examines the association between unemployment rate percentages and five macroeconomic variables: real Gross Domestic Product (GDP) growth, gross public debt as a percentage of GDP, population size, government revenue as a percentage of GDP, and government expenditure as a percentage of GDP. The results highlight significant correlations, particularly the strong positive relationship between unemployment rates and gross public debt (% of GDP) (0.8417), while real GDP growth shows a weak correlation (0.0783), indicating that debt levels may be a more crucial determinant of unemployment variations in this context. Additionally, a comparison of modern regression models, namely Support Vector Regression (SVR), Neural Network Regression, and Bayesian Regression, is conducted based on their performance metrics: Mean Absolute Error (MAE), Root Mean Square Error (RMSE), R-Squared, Akaike Information Criterion (AIC), and Bayesian Information Criterion (BIC). Among the models, Support Vector Regression outperforms the others, with the lowest MAE (0.0823), RMSE (0.0878), and the highest R-Squared value (0.9915), along with notably favourable AIC (-100.2072) and BIC (-69.4268) scores. Neural Network Regression also delivers competitive performance with a slightly higher MAE and RMSE but a similarly strong R-Squared (0.9887). In contrast, Bayesian Regression exhibits weaker predictive power with higher error metrics (MAE = 0.2579, RMSE = 0.3109) and a significantly lower R-Squared (0.8806), AIC (28.0408), and BIC (36.8352). These findings underscore the efficacy of SVR in predictive modelling for macroeconomic datasets, suggesting its suitability for unemployment rate forecasting.},
     year = {2024}
    }
    

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  • TY  - JOUR
    T1  - Modelling and Forecasting Unemployment Trends in Kenya Using Advanced Machine Learning Techniques
    AU  - Reuben Opondo
    AU  - Davis Bundi
    AU  - Patrick Weke
    Y1  - 2024/12/18
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    DO  - 10.11648/j.ajtas.20241306.16
    T2  - American Journal of Theoretical and Applied Statistics
    JF  - American Journal of Theoretical and Applied Statistics
    JO  - American Journal of Theoretical and Applied Statistics
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    PB  - Science Publishing Group
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    AB  - This study conducts a comprehensive analysis exploring the relationship between key macroeconomic indicators and the unemployment rate, alongside evaluating the predictive accuracy of modern regression models. The correlation analysis examines the association between unemployment rate percentages and five macroeconomic variables: real Gross Domestic Product (GDP) growth, gross public debt as a percentage of GDP, population size, government revenue as a percentage of GDP, and government expenditure as a percentage of GDP. The results highlight significant correlations, particularly the strong positive relationship between unemployment rates and gross public debt (% of GDP) (0.8417), while real GDP growth shows a weak correlation (0.0783), indicating that debt levels may be a more crucial determinant of unemployment variations in this context. Additionally, a comparison of modern regression models, namely Support Vector Regression (SVR), Neural Network Regression, and Bayesian Regression, is conducted based on their performance metrics: Mean Absolute Error (MAE), Root Mean Square Error (RMSE), R-Squared, Akaike Information Criterion (AIC), and Bayesian Information Criterion (BIC). Among the models, Support Vector Regression outperforms the others, with the lowest MAE (0.0823), RMSE (0.0878), and the highest R-Squared value (0.9915), along with notably favourable AIC (-100.2072) and BIC (-69.4268) scores. Neural Network Regression also delivers competitive performance with a slightly higher MAE and RMSE but a similarly strong R-Squared (0.9887). In contrast, Bayesian Regression exhibits weaker predictive power with higher error metrics (MAE = 0.2579, RMSE = 0.3109) and a significantly lower R-Squared (0.8806), AIC (28.0408), and BIC (36.8352). These findings underscore the efficacy of SVR in predictive modelling for macroeconomic datasets, suggesting its suitability for unemployment rate forecasting.
    VL  - 13
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    ER  - 

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