Classification of Stunting in Toddlers using Naive Bayes Method and Decision Tree

Authors

  • Adrian Maulana Universitas Qamarul Huda Badaruddin , Indonesia Author
  • Muhammad Ilham Universitas Qamarul Huda Badaruddin , Indonesia Author
  • Syahrani Lonang Universitas Qamarul Huda Badaruddin , Indonesia Author
  • Nazaruddin Insyroh Leiden University , Netherlands Author
  • Apolonia Diana Sherly da Costa University of Münster , Germany Author
  • Florence Jean B. Talirongan Misamis University , Philippines Author
  • Furizal Furizal Peneliti Teknologi Teknik Indonesia , Indonesia Author
  • Asno Azzawagama Firdaus Universitas Qamarul Huda Badaruddin , Indonesia Author

DOI:

https://doi.org/10.64021/ijmst.1.1.28-33.2025

Keywords:

decision tree, machine learning, naïve bayes, stunting

Abstract

Child stunting is a health problem that has a major impact on their physical growth and brain development. This study aims to create a model that can predict the risk of stunting using machine learning technology, in order to provide assistance quickly. Using data from 7,573 children, which included information such as age, weight, height gender and breastfeeding status, we tried two methods, Naive Bayes and Decision Tree. As a result, Naive Bayes was more accurate and the success rate reached 92%, compared to Decision tree which was only 88%. With this model, it is hoped that health workers will find it easier to find children at risk of stunting, so that preventive action can be taken earlier. This research aims to provide technology-based solutions to overcome the problem of stunting in the community.

References

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Published

2025-01-31

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Articles

How to Cite

Classification of Stunting in Toddlers using Naive Bayes Method and Decision Tree. (2025). Indonesian Journal of Modern Science and Technology, 1(1), 28-33. https://doi.org/10.64021/ijmst.1.1.28-33.2025

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