Supporting Instructor Reflection on Employed Teaching Techniques via Multimodal Instructor Analytics

Jesse Eickholt
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Abstract

This work-in-progress in the Innovative Practice Category describes the use of multimodal data capture to inform instructors’ awareness of their activities in the classroom. Broadly construed, learning analytics is the collection and analysis of data in an educational context with the aim of improving educational outcomes. To capture a more wholistic characterization of an educational context, there has been increased interest in multimodal data such audio, gestures, positioning and movement. These data can characterize the content delivered and teaching techniques employed by the instructor. Instructor reflection on both may lead to improvements in instruction.Presented here is IATracer, a lightweight system for multi-modal instructor data capture consisting of a lavalier microphone paired with a positioning badge. The microphone captures classroom audio and using Google Cloud’s Speech-to-Text API with diarization, the instructor’s speech can be isolated and transcribed. Analysis of this text can provide insights into what topics were covered, for how long and what questions were asked. Additional analysis could provide the instructor feedback on the delivery (e.g., long monologues) and the level of student interaction (e.g., dialogue, questions directed towards students). Novel aspects of this work-in-progress include the lightweight, economical nature of the system and its use of Google Cloud services. The insights generated by the system will enable faculty to reflect upon their employed teaching techniques and the content of their interaction with students. Such reflection ensures alignment of employed technique with intent.
通过多模态教师分析支持教师反思所采用的教学技巧
创新实践类别中的这项正在进行的工作描述了使用多模态数据捕获来告知教师他们在课堂上的活动。广义地说,学习分析是在教育环境中收集和分析数据,目的是改善教育成果。为了更全面地描述教育环境,人们对音频、手势、定位和运动等多模态数据的兴趣越来越大。这些数据可以描述讲师所提供的内容和使用的教学技术。教师对这两方面的反思可能会导致教学的改进。这里介绍的是IATracer,这是一个轻量级的多模式教练数据采集系统,由一个配有定位徽章的lavalier麦克风组成。麦克风捕获课堂音频,并使用谷歌云的语音到文本API与拨号,教师的演讲可以被隔离和转录。分析这篇文章可以提供洞察什么主题被涵盖,多长时间和什么问题被问到。额外的分析可以为教师提供关于讲课(例如,长独白)和学生互动水平(例如,对话,直接向学生提问)的反馈。这项正在进行的工作的新颖方面包括系统的轻量级、经济性以及它对Google云服务的使用。该系统产生的见解将使教师能够反思他们所采用的教学技术以及他们与学生互动的内容。这样的反射确保了所使用的技术与意图的对齐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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