改进教育视频导航的数据驱动交互技术

Juho Kim, Philip J. Guo, Carrie J. Cai, Shang-Wen Li, Krzysztof Z Gajos, Rob Miller
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引用次数: 179

摘要

随着在mooc和YouTube等在线平台上观看教育视频的学习者达到前所未有的规模,我们有机会将他们互动产生的数据整合到新型视频互动技术的设计中。互动数据不仅可以帮助教师改进他们的视频,还可以丰富教育视频观看者的学习经验。本文探讨了教育视频导航中数据驱动交互技术的设计空间。我们介绍了一组增强现有视频界面小部件的技术,包括:具有嵌入式可视化集体导航痕迹的2D视频时间轴;动态和非线性时间线擦洗;数据增强型文本搜索和关键词汇总;自动显示视频旁边的相关静止帧;和一个视觉总结,代表高学习者活动的点。为了评估这些技术的可行性,我们进行了一个模拟学习任务的实验室用户研究。参与者认为观看带有交互数据的讲座视频在完成任务时是有效和有用的。然而,在任务表现上没有发现显著差异,这表明交互数据可能并不总是与任务中每时每刻的信息需求一致。
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Data-driven interaction techniques for improving navigation of educational videos
With an unprecedented scale of learners watching educational videos on online platforms such as MOOCs and YouTube, there is an opportunity to incorporate data generated from their interactions into the design of novel video interaction techniques. Interaction data has the potential to help not only instructors to improve their videos, but also to enrich the learning experience of educational video watchers. This paper explores the design space of data-driven interaction techniques for educational video navigation. We introduce a set of techniques that augment existing video interface widgets, including: a 2D video timeline with an embedded visualization of collective navigation traces; dynamic and non-linear timeline scrubbing; data-enhanced transcript search and keyword summary; automatic display of relevant still frames next to the video; and a visual summary representing points with high learner activity. To evaluate the feasibility of the techniques, we ran a laboratory user study with simulated learning tasks. Participants rated watching lecture videos with interaction data to be efficient and useful in completing the tasks. However, no significant differences were found in task performance, suggesting that interaction data may not always align with moment-by-moment information needs during the tasks.
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