Predicting Student Smoking Habits with Machine Learning Techniques

Shashank H M, Hemanth Kumar
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Abstract

Smoking among students remains a health concern, the intent of this work is to predict the students those who smokes cigarette by utilizing a machine learning-based approach based on behavioral, socioeconomic and other factor. The model should utilize available data to accurately classify students into smoker and non-smoker categories. The data is collected through Google forms from random people. Here in this work Random Forest models, Logistic Regression techniques, and Decision Tree methods are employed for building prediction model for smoking behavior. Comparative analysis of these three algorithms provides us the vision on which method is significant for the task
利用机器学习技术预测学生吸烟习惯
学生吸烟仍然是一个健康问题,这项工作的目的是利用基于行为、社会经济和其他因素的机器学习方法来预测吸烟的学生。该模型应利用现有数据准确地将学生分为吸烟者和非吸烟者两类。数据是通过谷歌表格从随机人群中收集的。在这项工作中,采用了随机森林模型、逻辑回归技术和决策树方法来建立吸烟行为预测模型。通过对这三种算法的比较分析,我们可以看出哪种方法对这项任务更有意义。
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