Obesity Risk Prediction Using Machine Learning Approach

A. S. Maria, R. Sunder, R. Kumar
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Abstract

Approximately about two billion peoples are affected by obesity that has drawn significant attention on social media. As the sedentary lifestyle which includes consumption of junk foods, no physical activities,spending more on screen,etc are one of the causes of obesity.Obesity generally refers to that a person’s body possessing an excessive amount of fat.There is a huge increase in obesity cases which resulting cardiac problems,stroke,insomnia, breathing problems,etc.Type-2 diabetes has been detected in the patients suffering from obesity recently. The studies showing that there are lot of young individuals and children’s who has been suffering from overweight and obesity issues in Bangladesh. Here, a strategy for predicting the risk of obesity is proposed that makes use of various machine learning methods. The dataset Obesity and Lifestyle taken from Kaggle site which is collection of different data based on the eating habits and physical conditions,such as height, weight,calorie intake,physical activities are just a few of the 17 different categories in the dataset that reflect the elements that cause obesity. Several machine learning methods include Gradient Boosting Classifier, Adaptive Boosting (ADA boosting), K-nearest Neighbor (K-NN), Support Vector Machine (SVM), Random Forest, and Decision Tree. A few important performance factors are used to group the models. Predicting the levels of high, medium, and low obesity in this case using the experimental results. The gradient boosting techniques have the highest accuracy 97.08% in comparison to other classifiers
利用机器学习方法预测肥胖风险
大约有20亿人受到肥胖的影响,这在社交媒体上引起了极大的关注。由于久坐不动的生活方式,包括消费垃圾食品,没有体育活动,花更多的时间在屏幕上,等是肥胖的原因之一。肥胖通常是指一个人的身体拥有过多的脂肪。肥胖导致心脏问题、中风、失眠、呼吸问题等的病例大幅增加。最近在肥胖患者中发现了2型糖尿病。研究表明,孟加拉国有很多年轻人和儿童患有超重和肥胖问题。本文提出了一种利用各种机器学习方法预测肥胖风险的策略。数据集肥胖和生活方式取自Kaggle网站,它是基于饮食习惯和身体状况的不同数据的集合,如身高,体重,卡路里摄入量,体育活动只是数据集中反映导致肥胖因素的17个不同类别中的一小部分。几种机器学习方法包括梯度增强分类器、自适应增强(ADA Boosting)、k -最近邻(K-NN)、支持向量机(SVM)、随机森林和决策树。使用几个重要的性能因素对模型进行分组。利用实验结果预测高、中、低肥胖水平。与其他分类器相比,梯度增强技术的准确率最高,达到97.08%
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