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Predictive models to enhance learning based on student profiles derived from cognitive and social constructs

机译:基于从认知和社会构造中得出的学生概况的增强学习的预测模型

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A preliminary exploratory and predictive model to correlate the academic performance of a sample of 96 students enrolled in different basic engineering courses with cognitive and social constructs is presented. The model integrates several dimensions regarding Multiple Intelligences, Self-Regulation skills and Learning Styles constructs. The exploratory study is carried out with three statistical methods: analysis of principal components, correlation analysis and cluster formation. The prediction of students' final grades was accomplished from three perspectives: i) from the average final grade in each cluster, ii) obtaining rules to classify, a-priori, each student as “pass” or “fail” by means of decision trees, and iii) detecting those dimensions of the constructs that have a larger impact on students' grades, using linear regressions. It is found that the logical-mathematical intelligence has the largest positive impact and the anxiety of the students also has a significant, but negative, impact. It is also found that students who present a high intrinsic motivation are very likely to pass their courses. Additionally, it is found that the average grades in each cluster are the expected ones according to the characteristics defining the cluster. The results are encouraging and may serve to improve instructional design and the elaboration of more tailored didactic resources.
机译:提出了一个初步的探索性和预测性模型,该模型将参加不同基础工程课程的96名学生的样本的学习成绩与认知和社会建构联系起来。该模型整合了有关多元智能,自我调节技能和学习风格构造的多个维度。探索性研究采用三种统计方法进行:主成分分析,相关性分析和聚类形成。对学生最终成绩的预测是从三个角度完成的:i)从每个组的平均最终成绩中获得; ii)通过决策树获取将每个学生按先验分类为“及格”或“不及格”的规则;以及iii)使用线性回归检测对学生成绩有较大影响的结构尺寸。结果发现,逻辑数学智能具有最大的积极影响,而学生的焦虑也具有重大但消极的影响。还发现具有较高内在动力的学生极有可能通过他们的课程。另外,根据定义聚类的特征,发现每个聚类中的平均等级是预期等级。结果令人鼓舞,并可能有助于改进教学设计和制定更多量身定制的教学资源。

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