Classification of Secondary School Destination for Inclusive Students using Decision Tree Algorithm

Rizal Prabaswara, Julianto Lemantara, J. Jusak
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Abstract

Inclusive student education has become one of the most important agendas for UNESCO and the Indonesian government. Developing inclusive children's education is critical to adjust their abilities while attending school. However, most parents and educators who assist students in selecting their future secondary school after finishing primary school are frequently not aware of their genuine ability. The problem is mainly because the decision is not based on objective assessments like IQ, average and mental scores. In this study, we aims to create a school-type decision support system using data mining as a factor analytic approach in extracting rules for the knowledge model. The system uses some variables as the basic principles for building school-type classification rules using the ID3 decision tree method. This system can also assist educators in making decisions based on existing graduate data. Evaluation showed that the proposed system produced an accuracy of 90% by allocating 75% of data for training and 25% for testing. The accuracy value from evaluation phase stated that the ID3 Decision tree algorithm have a good peformance. This system also can dynamically create new decision trees based on newly added datasets. Further research is expected to have more variable and more dynamic system that can have more accurate result for the inclusive student classification of secondary school.
基于决策树算法的包容性学生中学目的地分类
全纳学生教育已成为教科文组织和印尼政府最重要的议程之一。发展包容性儿童教育对于在上学期间调整他们的能力至关重要。然而,大多数帮助学生在小学毕业后选择未来中学的家长和教育工作者往往没有意识到他们的真正能力。问题主要在于这个决定不是基于客观的评估,比如智商、平均水平和心理得分。在本研究中,我们的目标是建立一个学校类型的决策支持系统,使用数据挖掘作为因子分析方法来提取知识模型的规则。该系统以一些变量为基本原则,采用ID3决策树方法构建学校类型分类规则。该系统还可以帮助教育工作者根据现有的毕业生数据做出决策。评估表明,通过分配75%的数据用于训练和25%的数据用于测试,所提出的系统产生了90%的准确性。评估阶段的准确率值表明,ID3决策树算法具有良好的性能。该系统还可以根据新添加的数据集动态创建新的决策树。期望进一步的研究能够有更多的变量和更动态的系统,为中学包容性学生分类提供更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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