机器学习如何在虚拟协作学习环境中支持教学人员?

Arne Böhmer, Maximilian Musch, Hannes Schubert, Sebastian Schmidt
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引用次数: 0

摘要

目的:虚拟协作学习(VCL)环境中的监督角色面临许多不同的挑战,并且经常难以关注所有内容并理解每个参与者或团队的工作流程。为了帮助主管解决类似的问题,我们开发了一个软件原型来支持他们的日常工作流程并克服上述挑战。研究设计/方法/方法:本研究使用设计科学研究方法来调查学习分析如何能够支持VCL设置中的教学人员。先前的研究表明,这种方法非常适合于为这样的软件工件派生设计指南。最初,我们对四位经验丰富的导师进行了一系列定性访谈,以深入了解教学人员在VCL环境中通常面临的挑战和任务。系统地分析了访谈材料,以获得潜在的软件需求。然后将这些与现有的类似用例支持软件的知识相结合,创建第一个原型,主要基于监督机器学习模型,该模型对团队内发送的在线消息进行分类。研究结果:我们开发的软件工具表明,机器学习过程确实可以用于支持VCL环境中的教学人员。该工具在对聊天消息进行分类时取得了令人满意的分类性能。因此,可以证明使用软件工具对聊天信息进行分类是可能的。通过访谈,我发现我对微软团队中小组活动的统计评估特别感兴趣。据说这在随后的小组评估中节省了很多时间。接受采访的e导师还表示,他们有兴趣获得有关小组内部可能发生冲突的发展的私人信息。受访主管的兴趣非常高,额外的访谈可能会导致进一步可能的特征想法。总的来说,关于我们的原型如何支持eTutors的工作,评估性访谈得到了积极的反馈。原创性/价值:在当今时代,空间分布和异步教育比以往任何时候都发挥着更大的作用。VCL环境是克服这些时间和空间挑战的有用工具。然而,与对会话代理或自动反馈系统的研究不同,这项工作的重点不是软件和用户之间的通信接口,也不是对消息的专门定量分析。目标是使用六个定义的类别来评估VCL环境中发送的消息的内容,以便更好地定性地了解团队的协作及其工作流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
(How) Can Machine Learning Support Teaching Staff in a Virtual Collaborative Learning Environment?
Purpose: Supervising roles within virtual collaborative learning (VCL) environments face many different challenges and are often having difficulties keeping an eye on everything and comprehending every participant’s or group’s workflow. To help supervisors with problems like that we developed a software prototype to support their daily workflow and overcome the mentioned challenges. Study design/methodology/approach: This study used a design science research approach to investigate how learning analytics might be able to support teaching staff in VCL settings. Previous studies demonstrated that this approach is very well suited to derive design guidelines for such software artifacts. Initially, a qualitative interview series with four experienced tutors was carried out to get an in-depth understanding of the challenges and tasks teaching staff typically faces in VCL environments. The interview material was systematically analysed to acquire the underlying software requirements. These were then combined with existing knowledge about support software of similar use cases to create a first prototype, primarily based on a supervised machine learning model that classifies online messages sent within the teams. Findings: The software tool we have developed has shown that machine learning processes can indeed be used to support teaching staff in VCL environments. The tool achieves satisfactory classification performance in categorizing chat messages. It could therefore be demonstrated that it is possible to classify chat messages using a software tool. The interviews conducted revealed a particular interest in the statistical evaluations of group activities in Microsoft Teams. This was said to save a lot of time in the subsequent evaluation of the groups. The interviewed eTutors also expressed an interest in receiving private information on the development of possible conflicts within groups. The interest of the interviewed supervisors was very high and additional interviews could lead to further possible feature ideas. In general, the evaluative interviews resulted in positive feedback regarding how our prototype supported eTutors during their work. Originality/value: In current times, spatially distributed and asynchronous education plays a bigger role than ever before. VCL environments are useful tools to overcome these challenges of time and space. However, unlike research on conversational agents or automated feedback systems, the focus of this work is not on the communication interface between software and users or the exclusively quantitative analysis of messages. The goal is to evaluate the content of sent messages within VCL environments using the six defined categories to gain a better qualitative understanding of the teams’ collaboration and its workflow.
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