Machine Learning Modelling for Imbalanced Dataset: Case Study of Adolescent Obesity in Malaysia
Nur Liana Ab Majid,
Syahid Anuar
Abstract:Obesity among adolescent is a public health issue with increasing burden of disease. Predicting imbalanced health data with Machine Learning may introduce bias and lead to diminished model performance. Misclassification in healthcare data could lead to misdiagnosing a patient or failing to detect a health issue when it is present. The purpose of this study is to predict adolescent obesity using machine learning along with implementation of multiple approaches on the imbalanced dataset. This study used secondar… Show more
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