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Academic Performance Prediction Using Data Mining Techniques: Identification of Influential Factors Effecting the Academic Performance in Undergrad Professional Course

机译:使用数据挖掘技术进行学术性的性能预测:识别影响本科专业课程中学业成绩的影响因素

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Educational data mining is used to convert the randomly available data in educational settings into some beneficial information. It helps in building insights for different research questions that arise in educational settings like performance prediction of students in academics, designing of new courses, instructors' feedback, method or mode of teaching, etc. This paper aims to answer questions that has been a major challenge for researchers, i.e. the huge list of drop out rate and lower percentage of first-year students. It highlights factors that affect the performance of students. There are a lot of studies that has been conducted in the field education like psychology and statistics. This case study targeted students enrolled in Bachelor of Computer Applications (BCA). The aim of our research work was to show the impact of variables on academic performance of students. The sample size of the study is 480 students of BCA. The questionnaire is based on factors categorized as Demographic, Academic, Social and Behavioural. The results of the study revealed that family income, parents qualification and interaction with teachers were among the influential factors along with previous year percentage, current year attendance and class behaviour.
机译:教育数据挖掘用于将随机可用的数据转换为教育环境中的某些有益信息。它有助于建立在教育环境中出现的不同研究问题的见解,如学者学生的绩效预测,新课程的设计,教师反馈,方法或教学方式等。本文旨在回答一直是主要的问题研究人员的挑战,即辍学率的巨大清单和较低的一年学生的比例。它突出了影响学生表现的因素。在心理学和统计数据等实地教育中进行了很多研究。本案例研究有针对性的学生注册了计算机应用的学士(BCA)。我们的研究工作的目的是展示变量对学生的学术表现的影响。该研究的样本规模是BCA的480名学生。调查问卷基于作为人口,学术,社会和行为分类的因素。该研究的结果透露,家庭收入,父母资格和与教师的互动是有影响力的因素,以及前一年的百分比,当前年度出席和阶级行为。

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