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首页> 外文期刊>Computers & education >Learning analytics for student modeling in virtual reality training systems: Lineworkers case
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Learning analytics for student modeling in virtual reality training systems: Lineworkers case

机译:虚拟现实培训系统中用于学生建模的学习分析:Lineworkers案例

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摘要

Live-line maintenance is a high risk activity. Hence, lineworkers require effective and safe training. Virtual Reality Training Systems (VRTS) provide an affordable and safe alternative for training in such high risk environments. However, their effectiveness relies mainly on having meaningful activities for supporting learning and on their ability to detect untrained students. This study builds a student model based on Learning Analytics (LA), using data collected from 1399 students that used a VRTS for the maintenance training of lineworkers in 329 courses carried out from 2008 to 2016. By employing several classifiers, the model allows discriminating between trained and untrained students in different maneuvers using three minimum evaluation proficiency scores. Using the best classifier, a Feature Importance Analysis is carried out to understand the impact of the variables regarding the trainees' final performances. The model also involves the exploration of the trainees' trace data through a visualization tool to pose nonobservable behavioral variables related to displayed errors. The results show that the model can discriminate between trained and untrained students, the Random Forest algorithm standing out. The feature importance analysis revealed that the most relevant features regarding the trainees' final performance were profile and course variables along with specific maneuver steps. Finally, using the visual tool, and with human expert aid, several error patterns in trace data associated with misconceptions and confusion were identified. In the light of these, LA enables disassembling the data jigsaw quandary from VRTS to enhance the human-in-the-loop evaluation.
机译:现场维护是一项高风险活动。因此,线路工作人员需要有效且安全的培训。虚拟现实培训系统(VRTS)为此类高风险环境中的培训提供了负担得起且安全的替代方案。但是,其有效性主要取决于开展有意义的活动来支持学习以及他们发现未经训练的学生的能力。这项研究建立了一个基于学习分析(LA)的学生模型,该模型使用了从1399名学生中收集的数据,这些学生使用VRTS在2008年至2016年期间进行了329门课程的线工维护培训。通过使用多个分类器,该模型可以区分使用三个最低评估熟练度得分,在不同操作中训练有素和未经训练的学生。使用最佳分类器,进行功能重要性分析,以了解变量对受训者最终表现的影响。该模型还涉及通过可视化工具探究学员的跟踪数据,以提出与显示的错误相关的不可观察的行为变量。结果表明,该模型可以区分训练有素和未经训练的学生,随机森林算法表现出色。特征重要性分析表明,与学员的最终表现最相关的特征是个人资料和课程变量以及特定的操作步骤。最后,使用可视化工具并在人类专家的协助下,识别了与误解和混乱相关的跟踪数据中的几种错误模式。鉴于此,LA可以从VRTS中解开数据拼图难题,以增强人在环评估的能力。

著录项

  • 来源
    《Computers & education》 |2020年第7期|103871.1-103871.19|共19页
  • 作者

  • 作者单位

    CONACYT INEEL Mexico City DF Mexico|Inst Nacl Elect & Energias Limpias Reforma 113 Cuernavaca 62490 Morelos Mexico;

    Univ Carlos III Madrid Dept Ingn Telemat Madrid 28911 Spain;

    Inst Nacl Elect & Energias Limpias Reforma 113 Cuernavaca 62490 Morelos Mexico;

    Pablo de Olavide Univ Data Sci & Big Data Lab Seville 41013 Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Learning analytics; Performance prediction; Feature importance analysis; Exploratory data analysis; Virtual reality;

    机译:学习分析;绩效预测;特征重要性分析;探索性数据分析;虚拟现实;

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