Data Analysis of Student Academic Performance Using Social and Academic Indicators

Mariam Ezziani, Salima Benhayoun, Yousra Chtouki
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Abstract

Data analysis has become one of the most important emerging fields. This is due to the wide usefulness of this discipline in improving and enhancing many other arenas. Whether in industry, commerce, economy, psychology, or education, data analysis has proven its efficiency in providing users with valuable results to increase their level of achievement. The ability to effectively manage information and extract knowledge is now seen as a key competitive advantage for organizations. [1] Valuable knowledge could easily be extracted with the use of data analysis to develop every sector of every world economy [2]. In this paper, we have combined a set of data in the educational field with some computational, statistical, or analytical techniques to draw interesting conclusions. Based on data from Al Akhawayn University in Ifrane AUI, this paper analyzes and predicts the distribution of students by schools and majors, the variance in their GPAs based on different criteria, and predicts the GPAs (Grade Point Average) of next years’ students. In this regard, the hypotheses that the study tackles as a basis for the analysis are as follows:•Students are more interested in engineering majors than social Sciences•Female students are more academically achieving compared to their male peers•Female students have better academic conduct•Next years’ students are more likely to have better average GPAs
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使用社会和学术指标的学生学习成绩数据分析
数据分析已成为最重要的新兴领域之一。这是由于这门学科在改进和加强许多其他领域的广泛用途。无论是在工业、商业、经济、心理学还是教育领域,数据分析已经证明了它在为用户提供有价值的结果以提高他们的成就水平方面的效率。有效管理信息和提取知识的能力现在被视为组织的关键竞争优势。[1]利用数据分析可以很容易地提取有价值的知识,以发展世界经济的每个部门bbb。在本文中,我们将教育领域的一组数据与一些计算、统计或分析技术相结合,得出了有趣的结论。本文基于法国阿卡瓦恩大学(Al Akhawayn University in france AUI)的数据,分析和预测了学生按学校和专业的分布情况,以及不同标准下学生gpa的差异,并预测了下一年学生的gpa (Grade Point Average)。在这方面,该研究作为分析基础的假设如下:•学生对工程专业比社会科学专业更感兴趣•女学生比男学生更有学术成就•女学生有更好的学术行为•明年的学生更有可能有更好的平均绩点
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