基于知识的决策技术在学生入学决策预测中的应用

D. B. Malaya, Rajni Jindal, D. Gupta, G. Deka
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引用次数: 12

摘要

本文在现有C4.5算法的基础上提出了一种新的属性选择度量函数(启发式)。启发式算法的优点是分离的信息永远不会趋近于零,从而产生稳定的规则集和决策树。在理想的情况下,在印度工程学院的录取过程中,学生根据AIEEE排名和家庭压力来录取。如果学生没有被理想的工程专业录取,那么他们就很难决定哪个是合适的专业。所提出的基于知识的决策技术将指导学生进入相应的工程专业。另一种方法是分析决策树算法(C5.0)和反向传播算法(ANN)的准确率,找出哪一种算法更适合决策。在本研究工作中,我们使用了AIEEE2007数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of knowledge based decision technique to predict student enrollment decision
In this paper we are proposing a new Attribute Selection Measure Function (heuristic) on existing C4.5 algorithm. The advantage of heuristic is that the split information never approaches zero, hence produces stable Rule set and Decision Tree. In ideal situation, in admission process in engineering colleges in India, a student takes admission based on AIEEE rank and family pressure. If the student does not get admission in the desired branch of engineering, then they find it difficult to take decision which will be the suitable branch. The proposed knowledge based decision technique will guide the student for admission in proper branch of engineering. Another approach is also made to analyze the accuracy rate for decision tree algorithm (C5.0) and back propagation algorithm (ANN) to find out which one is more accurate for decision making. In this research work we have used the AIEEE2007 Database.
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