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An application framework for mining online learning processes through event-logs

机译:通过事件日志挖掘在线学习过程的应用程序框架

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Purpose Learning management systems (LMS) provide detailed information about the processes through event-logs. Process and related data-mining approaches can reveal valuable information from these files to help teachers and executives to monitor and manage their online learning processes. In this regard, the purpose of this paper is to present an overview of the current direction of the literature on educational data mining, and an application framework to analyze the educational data provided by the Moodle LMS. Design/methodology/approach The paper presents a framework to provide a decision support through the approaches existing in process and data-mining fields for analyzing the event-log data gathered from LMS platforms. In this framework, latent class analysis (LCA) and sequential pattern mining approaches were used to understand the general patterns; heuristic and fuzzy approaches were performed for process mining to obtain the workflows and statistics; finally, social-network analysis was conducted to discover the collaborations. Findings The analyses conducted in the study give clues for the process performance of the course during a semester by indicating exceptional situations, clarifying the activity flows, understanding the main process flow and revealing the students' interactions. Findings also show that using the preliminary data analyses before process mining steps is also beneficial to understand the general pattern and expose the irregular ones. Originality/value The study highlights the benefits of analyzing event-log files of LMSs to improve the quality of online educational processes through a case study based on Moodle event-logs. The application framework covers preliminary analyses such as LCA before the use of process mining algorithms to reveal the exceptional situations.
机译:目的学习管理系统(LMS)通过事件日志提供有关过程的详细信息。过程和相关的数据挖掘方法可以从这些文件中揭示有价值的信息,以帮助教师和管理人员监视和管理其在线学习过程。在这方面,本文的目的是提供有关教育数据挖掘文献的当前方向的概述,以及分析Moodle LMS提供的教育数据的应用框架。设计/方法/方法本文介绍了一个框架,该框架可通过过程和数据挖掘领域中现有的方法来提供决策支持,以分析从LMS平台收集的事件日志数据。在此框架中,使用了潜在类别分析(LCA)和顺序模式挖掘方法来了解一般模式。进行启发式和模糊方法进行过程挖掘,以获得工作流程和统计数据;最后,进行了社交网络分析以发现合作关系。结果研究中进行的分析通过指出特殊情况,阐明活动流程,了解主要流程并揭示学生的互动情况,为学期课程过程的表现提供了线索。研究结果还表明,在过程挖掘步骤之前使用初步数据分析还有助于了解常规模式并暴露不规则模式。独创性/价值该研究突出了通过基于Moodle事件日志的案例研究分析LMS事件日志文件以提高在线教育过程质量的好处。该应用程序框架涵盖了初步分析,例如使用过程挖掘算法揭示异常情况之前的LCA。

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