Comparison of Machine Learning Methods for Calories Burn Prediction
Jing Sheng Alfred Tan,
Zarina Che Embi,
Noramiza Hashim
Abstract:This paper focuses on the prediction of calories burned during exercise using machine learning techniques. Due to a growing number of obesity and overweight people, a healthy lifestyle must be adopted and maintained. This study explores and compares several machine learning regression models namely LightGBM, XGBoost, Random Forest, Ridge, Linear, Lasso, and Logistic to assess their calories burned prediction performance that can be used in systems such as fitness recommender systems supporting a healthy lifest… Show more
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