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Effective Application of Naive Bayesian Classifier for Personal Online Learning Networks

机译:Naive Bayesian分类器对个人在线学习网络的有效应用

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Naive Bayesian classifier can be used to classify news and patients, but there are few studies on the classification of educational data. Based on Naieve Bayesian algorithm. This paper studies the relationship between course achievement and employment salary. Quantitative method is adopted as research methodology. The sample data sets were collected from Personal Online Learning Networks, which consist of the Student Performance Management System and Student Employment Management System. The sample category labels were constructed and the Hold-Out method was used to divide data sets into training sets and testing sets. 15 courses' performance as feature vector and employment wage as category, if the attribute condition was independent, a Naive Bayesian Classifier was established. The result indicating the higher the grade of DAWEB, ICT, INT and WNDW courses, the higher the employment wage. The conclusion is in accordance with the actual situation: Four courses mainly train students' comprehensive practical ability. The students who have stronger practical abilities are highly demanded by employers, hence, the higher salary will be provided. At the end, regarding the class conditional probability of P(x_i = E|s = H) (Performance = E, salary = H) as the weight of courses, build a topological structure diagram of courses.
机译:朴素贝叶斯分类器可用于分类新闻和患者,但仍有关于教育数据分类的研究。基于天病贝叶斯算法。本文研究了课程成果与就业薪水之间的关系。采用定量方法作为研究方法。从个人在线学习网络中收集示例数据集,该网络由学生绩效管理系统和学生就业管理系统组成。构造了样本类别标签,并使用阻止方法将数据集分为训练集和测试集。 15课程表演作为特征向量和就业工资作为类别,如果属性条件是独立的,建立了一个天真的贝叶斯分类器。结果表明DAWEB,ICT,INT和WNDW课程越高,就业工资越高。结论是符合实际情况:四门课程主要培养学生的综合实践能力。具有更强实际能力的学生受到雇主的强烈要求,因此,将提供更高的薪水。最后,关于P(X_I = e | S = H)的阶级条件概率(性能= e,薪水= h)作为课程的重量,构建课程的拓扑结构图。

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