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Exploring Factors and Indicators for Measuring Students’ Performance in Moodle Learning Environment

机译:探索学生在Moodle学习环境中表现的因素和指标

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One of the most important pillars of smart cities is the smart learning environ-ment. This environment should be well prepared and managed to improve the in-struction process for instructors from one side and the learning process for stu-dents from the other side. This paper presents the student’s Engagement, Behav-ior and Personality (EBP) predictive model. This model uses Moodle log data to investigate the influence and the effect of the students’ EBP factors on their per-formance. For this purpose, this paper uses the data log files of the "Search Strat-egies on the Internet" online course in Fall 2019 at Sultan Qaboos University (SQU) extracted from Moodle database. The intention of conducting this kind of experiments is of three-facets: 1. to assist in gaining a holistic understanding of online learning environments by focusing on student EBP and performance with-in the course activities, 2. to explore whether the student’s EBP can be considered as indicators for predicting student’s performance in online courses, and 3. to support instructors with insights to develop better learning strategies and tailor instructions for personal learning of individual students. Moreover, this paper takes a step forward in identifying effective methods to measure student’s EBP during the learning process. This may contribute to proposing a framework for the smart learning behavior environment that would guide the instructors to ob-serve students’ performance in a more creative way. All the 38 students who participated in this experiment had compatible statistics and results as the relationship between their Engagement, Behavior, Personality was symmetric with their Performance. This relationship was presented using a group of condition rules (If-then). The extracted rules gave us a straightforward and visual picture of the rela-tionship between the factors mentioned in this paper.
机译:智能城市最重要的支柱之一是智能学习环境。应该做好充分准备和设法这种环境,以改善来自一方的教师的结构过程和来自另一边的STU-凹痕的学习过程。本文介绍了学生的参与,行为和个性(EBP)预测模型。该模型使用Moodle Log数据来调查学生EBP因素对其盛会的影响和效果。为此,本文使用Moodle数据库中提取的Sultan Qaboos大学(Squ)在2019年秋季的“互联网上”在线课程的数据日志文件。进行这种实验的意图是三个方面:1。通过专注于课程活动的学生EBP和绩效来帮助获得对在线学习环境的整体理解,2.探索学生的EBP是否可以被视为预测学生在在线课程中表现的指标,以及3.支持有洞察力的教师开发更好的学习策略和定制个别学生个人学习的指示。此外,本文在识别学习过程中识别学生EBP的有效方法方面迈出了一步。这可能有助于提出智能学习行为环境的框架,这些框架将指导教师以更具创意的方式ob-of Comethics的表现。参加此实验的所有38名学生都兼容统计数据,结果与其参与,行为之间的关系,性格与其表现相对对称。使用一组条件规则(IF-DEN)呈现这种关系。提取的规则给了我们本文提到的因素之间的基准和视觉图像。

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