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Applying Machine Learning Techniques to Identify the Influential Factors of Students' Abilities to Apply Statistics Mathematics and Engineering Knowledge

机译:应用机器学习技术来确定学生能力统计数学和工程知识的能力的影响因素

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This Research to Practice Full Paper deals with the influential factors related to application of courses by the students. There are a large number of factors affecting students' abilities to apply knowledge of statistics, mathematics, and engineering. Even though the literature is replete with various methods to identify such factors, there is little research dedicated to exploring the influential factors using machine learning methods. Based on 200+ students' responses to senior exit survey, this study explored the influential factors using random forest approach. The variable of 'time spent at CPP (Cal Poly Pomona) towards obtaining a degree' turned out to be the most important in influencing the students' abilities at concerned subjects. This was followed by the time of sitting for EIT (Engineer in training) exam and the engagement of students in different clubs. Clearly, as per the self-assessment of students, their time devoted at CPP and their self-confidence in undertaking the EIT significantly influence their perception of statistics, mathematics and engineering knowledge. This study demonstrated that the random forest approach may be beneficial in such analysis and may be combined with the conventional methods such as multinomial logit regression to devise more informed strategies by the faculty and administration to improve student outcomes.
机译:本研究练习全文处理与学生课程应用相关的影响因素。有大量因素影响学生的能力,以应用统计数据,数学和工程知识。尽管文献是用各种方法的识别这些因素,但几乎没有研究使用机器学习方法探索影响的因素。基于200多名学生对高级出口调查的回应,本研究探讨了随机森林方法的影响因素。 “CPP(CAL POW POMONO)在获得程度上度过的”时间“变量朝向影响有关学科的学生能力最为重要。随后是坐在EIT(工程师在训练中)考试的时间以及学生在不同俱乐部的参与。显然,根据学生的自我评估,他们致力于CPP的时间以及他们在承诺中的自信地影响他们对统计数据,数学和工程知识的看法大大影响了。本研究表明,随机森林方法在这种分析中可能有益,并且可以与多项式Lo​​git回归等传统方法相结合,以通过教师和管理制定更明智的策略来改善学生结果。

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