A deep learning model of major consulting support

Kha-Tu Huynh, Nga Tu Ly
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Abstract

Introduction : Major selection is always a matter of concern for students who have just graduated from high school and parents who have children to go to universities. Currently, there are many students who selected the wrong major, leading to unexpected learning results and wasting time and money. In fact, many students do not know which majors they are suitable for. The paper proposes a model of decision-making support in choosing majors for students immediately after graduating from high school using deep learning. Methods : The model applied the XGBoost al-gorithm to build a decision tree for classification, mining educational data from which the student's ability and learning propensity are predicted and the appropriate majors are suggested. Results : The data used for the system are collected from 1709 students' results at the high school, the survey results on personal interests and personality, the teacher's comments and the results on major selection after graduation. From these data, the authors have built a model to advise students choosing the right major to continue their higher education. Conclusion : The model is evaluated and verified through actual experiments with a high accuracy of 86% and proves the contribution of deep learning models to education.
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主要咨询支持的深度学习模型
专业选择一直是高中刚毕业的学生和有孩子要上大学的家长关心的问题。目前,有很多学生选择了错误的专业,导致意想不到的学习结果,浪费时间和金钱。事实上,很多学生都不知道自己适合哪个专业。本文提出了一种基于深度学习的高中毕业生专业选择决策支持模型。方法:该模型采用XGBoost算法构建决策树进行分类,挖掘教育数据,预测学生的能力和学习倾向,并提出适合的专业。结果:系统使用的数据来源于1709名高中学生的成绩、个人兴趣和个性调查结果、老师的评语以及毕业后的专业选择结果。根据这些数据,作者建立了一个模型来建议学生选择合适的专业继续他们的高等教育。结论:通过实际实验对该模型进行了评估和验证,准确率高达86%,证明了深度学习模型对教育的贡献。
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