Abstract

Child undernutrition is a global public health problem with serious implications. In this study, we estimate predictive algorithms for the determinants of childhood stunting by using various machine learning (ML) algorithms. This study draws on data from the Ethiopian Demographic and Health Survey of 2016. Five ML algorithms including eXtreme gradient boosting, k-nearest neighbours (k-NN), random forest, neural network and the generalised linear models were considered to predict the socio-demographic risk factors for undernutrition in Ethiopia. Households in Ethiopia. A total of 9471 children below 5 years of age participated in this study. The descriptive results show substantial regional variations in child stunting, wasting and underweight in Ethiopia. Also, among the five ML algorithms, xgbTree algorithm shows a better prediction ability than the generalised linear mixed algorithm. The best predicting algorithm (xgbTree) shows diverse important predictors of undernutrition across the three outcomes which include time to water source, anaemia history, child age greater than 30 months, small birth size and maternal underweight, among others. The xgbTree algorithm was a reasonably superior ML algorithm for predicting childhood undernutrition in Ethiopia compared to other ML algorithms considered in this study. The findings support improvement in access to water supply, food security and fertility regulation, among others, in the quest to considerably improve childhood nutrition in Ethiopia.

Highlights

  • Notwithstanding, the machine learning (ML) algorithms have been widely touted for their prediction power, and this study provides an invaluable contribution to the undernutrition literature in the context of ML

  • This study shows considerable regional variations in childhood undernutrition and how commonly used ML algorithms could be applied to predicting child stunting, wasting and underweight determinants in Ethiopia

  • The findings show that the xgbTree algorithm offers better predictive accuracy than the traditional algorithm GLM

Read more

Summary

Methods

Data source This study uses data from the 2016 Ethiopian Demographic and Health Survey. The 2016 Ethiopian Demographic and Health Survey is currently the latest and part of the world demographic and health survey series that is conducted every 5 years. It is a nationally representative household survey that collects data on a broad range of population and health issues to enhance maternal and child health in Ethiopia[6]. The study sample is limited to 9471 children below age five This was based on retrospective information obtained from mothers about the BMI of their children within the 5 years preceding the survey (2011–2016)

Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call