Forecasting Infant Mortality Rate in Togo Using a Machine Learning Algorithm

Abstract

In this piece of work, the ANN approach was applied to analyze infant mortality rate (IMR) in Togo. The employed data covers the period 1960-2020 and the out-of-sample period ranges over the period 2021-2030. The residuals and forecast evaluation criteria (Error, MSE and MAE) of the applied model indicate that the model is stable in forecasting IMR rate in Togo. The applied ANN (12, 12, 1) model predictions suggest that IMR will be around 44/1000 live births per year in the coming 10 years. Therefore the government should focus on improving the quality of health care services especially primary health care and work towards developing strategies to retain its skilled health labour force.

Country : Zimbabwe

1 Dr. Smartson. P. NYONI2 Thabani NYONI

  1. ZICHIRe Project, University of Zimbabwe, Harare, Zimbabwe
  2. Department of Economics, University of Zimbabwe, Harare, Zimbabwe

IRJIET, Volume 5, Issue 3, March 2021 pp. 602-607

doi.org/10.47001/IRJIET/2021.503103

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