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A Comparative Performance of Classification Algorithms in Predicting Alcohol Consumption Among Secondary School Students

机译:分类算法在中学学生中饮酒中的分类算法的比较表现

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The increased consumption of alcohol among secondary school students has been a matter of concern these days. Alcoholism not only affects individual's decision-making ability but also have a negative effect on academic performance. The early prediction of a student consuming alcohol can be helpful in preventing them from such risks and failures. This paper evaluates classification algorithms for prediction of certain risks of secondary school student due to alcohol consumption. The classification algorithms considered here are three individual classifiers including Naive Bayes Classifier, Random Tree, Simple Logistic and three ensemble classifiers: Random Forest, Bagging, and Adaboost. The dataset is taken from the UCI repository. The performance of these algorithms is evaluated using standard evaluation metrics such as Accuracy, Precision, Recall and F-Measure. The results suggested that Simple Logistic and Random Forest performed better than the other classifiers.
机译:这些日子中,中学生中酒精的消费量增加是关注的问题。酗酒不仅影响个人的决策能力,而且对学术表现产生负面影响。消费酒精的学生早期预测可能有助于防止这些风险和失败。本文评估了因酒精消费而预测中学生某些风险的分类算法。这里考虑的分类算法是包括天真贝叶斯分类器,随机树,简单逻辑和三个集装箱:随机林,袋装和adaboost的三个单独的分类器。数据集从UCI存储库中获取。使用标准评估度量评估这些算法的性能,例如精度,精度,召回和F测量。结果表明,简单的逻辑和随机森林比其他分类器更好。

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