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Comparative study of supervised learning algorithms for student performance prediction

机译:监督学习算法对学生成绩预测的比较研究

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With huge amount of data in diverse technological areas, and generating such kinds of data rapidly, it needs for proper usage; therefore, Data Mining has emerged. Data Mining can extract prominent knowledge from customary data that can attract attention of people to it which is meaningful information. Regarding this concept that data can be generated rapidly every day or even every moment, data need to take under process for offering better valuable information. Data of educational areas is more that belongs to students, and it's all right a good basis for commence of applying Data Mining. In this paper the focus is on how to use Data Mining techniques to discover information in student`s raw data and different algorithms such as KNN, Naïve Bayes, and Decision Tree are implemented.
机译:由于各个技术领域中的海量数据,并且快速生成此类数据,因此需要正确使用;因此,出现了数据挖掘。数据挖掘可以从常规数据中提取重要的知识,这些知识可以吸引人们的注意力,这是有意义的信息。关于可以每天甚至每时每刻快速生成数据的概念,需要对数据进行处理以提供更好的有价值的信息。教育领域的数据更多地属于学生,这是开始应用数据挖掘的良好基础。本文的重点是如何使用数据挖掘技术在学生的原始数据中发现信息,并实现了不同的算法,例如KNN,朴素贝叶斯和决策树。

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