基于机器学习的学生成绩预测

Sanjay K. Singh, Shreeyeshi Goswami, Shubhangi Nagar, Mandeep Kaur, Nitin Rakesh, M. Goyal
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摘要

许多学者研究了学生在监督学习和非监督学习中的学习成绩,并使用了各种数据挖掘技术。为了获得重要的猜测技能,神经网络通常需要大量的观察。由于拥有学位的贫困学生人数不断增加,必须制定一项方案,以帮助减少这一祸害以及由于成绩不佳或为了工作而不得不完全辍学的发生率。因此,了解每种方法的优点和缺点是至关重要的,以便确定哪种方法最有效,哪种方法应该多次选择。该研究的目标是创建一个基于人工中立网络的学生成绩预测系统,该系统使用学生的数学特征来帮助大学根据以前的学生学习成绩选择具有高录取成功率预测的候选人(学生),这些学生最终将获得该机构的学位。该模型是使用一组输入变量建立的,包括父母状态。有了父母的数据,准确率约为80.84%,而没有父母的教育信息,准确率为81.37%,表明两者密切相关。因此,在大规模的学生数据中,根据这个机器学习的预测过程,这些差异将是非常小的。有很多事情,需要做预测过程来检查发生的可能性,随着进步的迅速增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Predicting Student’s Grade
Many scholars have looked into student academic performance in monitoring and non-supervision supervised learning, and they have used a variety of data mining techniques. To gain significant guessing skill, neural networks often require a large number of observations. Due to the rising number of impoverished students with degrees, it is vital to develop a programme that aids in the reduction of this scourge as well as the incidence of recurrence due to poor performance or the necessity to drop out of school entirely in pursuit of their job. As a result, it is vital to understand each one’s benefits and drawbacks in order to identify which one works best and which ones should be chosen many times. The study’s goal is to create an Artificial Neutral Network-based student performance prediction system that uses student mathematical features to help the university select candidates (students) with a high prediction of admission success based on previous student academic records who will eventually earn a degree from the institution. The model was built using a set of input variables, including parental status. With parent’s data, there is about 80.84 percent accuracy, whereas without information about parent’s education, there is 81.37 percent, indicating that they are closely related. As a result, in the large scale of student’s data, these differences will be so minor, according to this machine learning prediction process. There are many things, which need to do predictive process to check the possibility of happening that thing, as the advancement is rapidly increasing.
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