Proceedings of the 2014 ACM workshop on Multimodal Learning Analytics Workshop and Grand Challenge

X. Ochoa, M. Worsley, K. Chiluiza, S. Luz
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引用次数: 1

Abstract

Learning Analytics is the "middle-space" where Educational Sciences, Computer Science, Learning Technologies and Data Science converge. The main goal of this new field of knowledge is to contribute to new empirical findings, theories, methods, and metrics for understanding how students learn and to use that knowledge to improve those students' learning. Multimodal Learning Analytics, which emphasizes the analysis of natural rich modalities of communication during situated learning activities, is one of the most challenging but, at time, more promising areas of Learning Analytics. The Third International Workshop on Multimodal Learning Analytics brings together researchers in multimodal interaction and systems, cognitive and learning sciences, educational technologies, and related areas to discuss the recent developments and future opportunities in this sub-field. Following the First International Workshop on Multimodal Learning Analytics in Santa Monica in 2012 and the ICMI Grand Challenge on Multimodal Learning Analytics in Sydney in 2013, this third workshop comprises a mixture of a workshop session and two data-driven grand challenges. The program committee reviewed and accepted the following articles. The workshop session focuses on the presentation of multimodal signal analysis techniques that could be applied in Multimodal Learning Analytics. In this workshop challenges presenters concentrate on the benefits and shortcomings of different research and technical methods used for multimodal analysis of learning signals. This session includes four articles from diverse topics: theoretical and conceptual considerations for different forms of multimodal data fusion; voice analysis to determine the level of rapport in learning exercises; video analysis of live classrooms; and the role of multimodal analysis in the service of studying complex learning environments. Following the successful experience of the previous Multimodal Learning Analytics Grand Challenge in ICMI 2013, this year, this event will provide two data sets with a wealth of research questions to be tackled by interested participants: Math Data Challenge and Presentation Quality Challenge. For the Math Data Challenge, one article presented in this session provides a detailed exploration of how to use the digital pen information to predict the expertise in the group. This work reaches high levels of accuracy (83%) when identifying the expert student among the participants. For the Presentation Quality Challenge three articles are presented. The first one explores the slide presentation files and the audio features to predict the grade obtained by each student. The second work makes use of all the provided modalities (audio, video, Kinect data and slide files) and suggests that multimodal cues can predict human scores on presentation tasks. The final article uses the video and Kinect information to predict human grading. The third Multimodal Learning Analytics Workshop and Grand Challenges (MLA'14) was envisioned as a venue to initiate research in this nascent subfield of Learning Analytics. New challenges and insights will arise from the convergence of practitioners, academics and researchers, which in turn will create opportunities to collaborate and to create applications and tools to assist students, teachers and the community.
2014年ACM多模式学习分析研讨会和大挑战研讨会论文集
学习分析是教育科学、计算机科学、学习技术和数据科学融合的“中间空间”。这一新知识领域的主要目标是贡献新的实证发现、理论、方法和指标,以理解学生如何学习,并利用这些知识来提高学生的学习。多模态学习分析强调对情境学习活动中自然丰富的交流模式进行分析,是学习分析中最具挑战性但有时也是最有前途的领域之一。第三届多模态学习分析国际研讨会汇集了多模态交互和系统、认知和学习科学、教育技术和相关领域的研究人员,讨论了这一子领域的最新发展和未来机遇。继2012年在圣莫尼卡举行的第一届多模式学习分析国际研讨会和2013年在悉尼举行的ICMI多模式学习分析大挑战之后,第三届研讨会包括一个研讨会和两个数据驱动的大挑战。计划委员会审查并接受了以下文章。研讨会重点介绍了可应用于多模态学习分析的多模态信号分析技术。在本次研讨会挑战中,演讲者集中讨论了用于学习信号多模态分析的不同研究和技术方法的优点和缺点。本次会议包括来自不同主题的四篇文章:对不同形式的多模态数据融合的理论和概念考虑;语音分析,确定学习练习中的融洽程度;现场课堂视频分析;以及多模态分析在研究复杂学习环境中的作用。继ICMI 2013上一届多模式学习分析大挑战的成功经验之后,今年的活动将提供两个数据集,其中包含大量的研究问题,供感兴趣的参与者解决:数学数据挑战和演示质量挑战。对于数学数据挑战赛,本次会议上的一篇文章详细探讨了如何使用数字笔信息来预测小组中的专业知识。在识别参与者中的专家学生时,这项工作达到了很高的准确性(83%)。在“演讲质量挑战赛”中,将提交三篇文章。第一个是研究幻灯片演示文件和音频特征,以预测每个学生的成绩。第二项工作利用了所有提供的模式(音频、视频、Kinect数据和幻灯片文件),并表明多模式线索可以预测人类在演示任务中的得分。最后一篇文章使用视频和Kinect信息来预测人类评分。第三届多模式学习分析研讨会和重大挑战(MLA'14)被设想为一个启动学习分析这一新兴子领域研究的场所。从业者、学者和研究人员的融合将带来新的挑战和见解,这反过来又将创造合作的机会,并创建应用程序和工具来帮助学生、教师和社区。
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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