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Designing A Method for Alcohol Consumption Prediction Based on Clustering and Support Vector Machines

机译:基于聚类和支持向量机的酒精消费量预测方法设计

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In this study, an implementation of several data mining techniques is presented, including decision trees, Support Vector Machines (SVM), Bayesian Networks and K-Nearest Neighbor and their comparison using different evaluation metrics such as True Positive Rate (TpRate), False Positive Rate (FpRate) and Recall, with the dataset "STUDENT ALCOHOL CONSUMPTION", that provides information of alcohol consumption in teenagers in Portugal. High alcohol consumption rate in teenagers in society, high schoolers and college students, has become a social problem with alarming data showing they start consuming alcohol between 10 and 14 years and this obviously has a huge impact in their behavior, especially with situations such as binge drinking. At the end of the study, the results found show that Support Vector Machines (SVM) have a better accuracy rate than other techniques used and corroborate that the proposed method it is quite efficient and highly precise for detection of students consuming alcohol, improving the results obtained in previous similar studies.
机译:在这项研究中,提出了几种数据挖掘技术的实现,包括决策树,支持向量机(SVM),贝叶斯网络和K最近邻,以及使用不同的评估指标(例如,真阳性率(TpRate),假阳性)进行比较率(FpRate)和召回率,数据集“学生酒精消费量”提供了葡萄牙青少年饮酒的信息。社会上的青少年,高中生和大学生的高饮酒率已成为一个社会问题,令人震惊的数据表明,他们开始饮酒10至14岁之间,这显然对他们的行为产生巨大影响,尤其是在暴饮暴食等情况下喝。在研究结束时,发现的结果表明,支持向量机(SVM)的准确率高于其他使用的技术,并证实了所提出的方法对于检测饮酒的学生非常有效且非常精确,从而改善了结果在以前的类似研究中获得。

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