Comparison of Machine Learning Methods for Calories Burn Prediction

Jing Sheng Alfred Tan, Zarina Che Embi, N. Hashim
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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 lifestyle. Our findings show that the LightGBM for predicting calorie burn has a good accuracy of 1.27 mean absolute error, giving users reliable recommendations. The proposed system has a good potential in assisting users in reaching their fitness objectives by offering precise and tailored advice.
用于预测卡路里消耗量的机器学习方法比较
本文的重点是利用机器学习技术预测运动过程中消耗的卡路里。由于肥胖和超重人数不断增加,必须采取并保持健康的生活方式。本研究探讨并比较了几种机器学习回归模型,即 LightGBM、XGBoost、Random Forest、Ridge、Linear、Lasso 和 Logistic,以评估它们的卡路里消耗预测性能,这些模型可用于支持健康生活方式的健身推荐系统等系统中。我们的研究结果表明,用于预测卡路里消耗量的 LightGBM 具有良好的准确性(平均绝对误差为 1.27),能为用户提供可靠的建议。通过提供精确和量身定制的建议,拟议的系统在帮助用户实现健身目标方面具有良好的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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