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Analysis of the Factors Influencing Learners’ Performance Prediction With Learning Analytics

机译:影响学习者绩效预测与学习分析的因素分析

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The advancement of learning analytics has enabled the development of predictive models to forecast learners & x2019; behaviors and outcomes (e.g., performance). However, many of these models are only applicable to specific learning environments and it is usually difficult to know which factors influence prediction results, including the predictor variables as well as the type of prediction outcome. Knowing these factors would be relevant to generalize to other contexts, compare approaches, improve the predictive models and enhance the possible interventions. In this direction, this work aims to analyze how several factors can make an influence on the prediction of students & x2019; performance. These factors include the effect of previous grades, forum variables, variables related to exercises, clickstream data, course duration, type of assignments, data collection procedure, question format in an exam, and the prediction outcome (considering intermediate assignment grades, including the final exam, and the final grade). Results show that variables related to exercises are the best predictors, unlike variables about forum, which are useless. Clickstream data can be acceptable predictors when exercises are not available, but they do not add prediction power if variables related to exercises are present. Predictive power was also better for concept-oriented assignments and best models usually contained only the last interactions. In addition, results showed that multiple-choice questions were easier to predict than coding questions, and the final exam grade (actual knowledge at a specific moment) was harder to predict than the final grade (average knowledge in the long term), based on different assignments during the course.
机译:学习分析的进步使预测模型的发展成为预测学习者和X2019;行为和结果(例如,性能)。然而,许多这些模型仅适用于特定的学习环境,并且通常难以知道哪些因素影响预测结果,包括预测变量以及预测结果的类型。了解这些因素与概括到其他环境,比较方法,改善预测模型,增强可能的干预措施。在这方面,这项工作旨在分析几个因素如何影响学生的预测和X2019;表现。这些因素包括先前等级,论坛变量,与练习相关的变量的效果,点击流数据,课程持续时间,分配类型,课程类型,问题格式,在考虑中的预测结果(考虑中间分配等级,包括最终分配等级)考试和最终成绩)。结果表明,与练习相关的变量是最佳预测因子,与关于论坛的变量不同,这是无用的。当练习不可用时,Clickstream数据可以是可接受的预测因子,但如果存在与练习相关的变量,则不会添加预测电源。对于面向概念的分配而言,预测力也更好,最好的模型通常仅包含最后一次交互。此外,结果表明,多项选择的问题比编码问题更容易预测,最终的考试等级(特定时刻的实际知识)比最终成绩(长期的平均知识)更难预测课程中的不同作业。

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