整合学习分析来预测学生的表现行为

R. Abdulwahhab, Shaqran Shakir Abdulwahab
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引用次数: 10

摘要

在教育机构中使用学习分析(LA)是一个多年来经历了前所未有的增长的领域。LA是对电子数据的收集和分析,以观察学习过程中的隐藏模式。洛杉矶大学的主要目标之一是帮助教师和顾问确定哪些学生可能有风险,哪些学生在学术生涯中面临困难。根据现有文献,本文提出并讨论了一种新的预测模型的发展。该模型充分利用了学生数据的电子特性,包括学生的活动和成绩。紧凑预测树(CPT+)已经在文献中被描述,并证明了它在许多不同学科中解决各种问题的有效性。本文提出了一种新的基于CPT+算法的预测模型,用于预测即将到来的课程或已注册课程的下一个成绩。为了评估所提出的模型的性能,使用CAS中的数据集作为测试问题集。对该方法进行了准确性检验,其结果明显优于依赖图(DG)和部分匹配预测(PMP)等预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating learning analytics to predict student performance behavior
Using Learning Analytics (LA) in educational institutions is an area that has experienced unprecedented growth over the years. LA is the collection and analysis of electronic data to observe hidden patterns in the learning process. One of the main aims of LA is to help faculty and advisors determine which students might be at risk and who are facing difficulty in their academic career. Drawing upon extant literature, this paper proposes and discusses the development of a new prediction model. The proposed model takes the advantage of the fully electronic characteristics of student data, which include student activity and their marks. Compact Prediction Tree (CPT+) has been described in literature and has proved its efficacy to solve various problems in many different disciplines. In this paper, a new prediction model based on a CPT+ algorithm to predict the next grade for upcoming courses or for the registered course(s), is proposed. To evaluate the performance of the proposed model, dataset in CAS were applied as the test problem set. The method was examined in terms of accuracy and its result was significantly better than other prediction models, namely Dependency Graph (DG) and Prediction by Partial Matching (PMP).
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