Edwin Chng, M. Seyam, William Yao, Bertrand Schneider
{"title":"Toward capturing divergent collaboration in makerspaces using motion sensors","authors":"Edwin Chng, M. Seyam, William Yao, Bertrand Schneider","doi":"10.1108/ils-08-2020-0182","DOIUrl":null,"url":null,"abstract":"\nPurpose\nThis study aims to uncover divergent collaboration in makerspaces using social network analysis to examine ongoing social relations and sequential data pattern mining to invesitgate temporal changes in social activities.\n\n\nDesign/methodology/approach\nWhile there is a significant body of qualitative work on makerspaces, there is a lack of quantitative research identifying productive interactions in open-ended learning environments. This study explores the use of high frequency sensor data to capture divergent collaboration in a semester-long makerspace course, where students support each other while working on different projects.\n\n\nFindings\nThe main finding indicates that students who diversely mix with others performed better in a semester-long course. Additional results suggest that having a certain balance of working individually, collaborating with other students and interacting with instructors maximizes performance, provided that sufficient alone time is committed to develop individual technical skills.\n\n\nResearch limitations/implications\nThese discoveries provide insight into how productive makerspace collaboration can occur within the framework of Divergent Collaboration Learning Mechanisms (Tissenbaum et al., 2017).\n\n\nPractical implications\nIdentifying the diversity and sequence of social interactions could also increase instructor awareness of struggling students and having this data in real-time opens new doors for identifying (un)productive behaviors.\n\n\nOriginality/value\nThe contribution of this study is to explore the use of a sensor-based, data-driven, longitudinal approach in an ecologically valid setting to understand divergent collaboration in makerspaces. Finally, this study discusses how this work represents an initial step toward quantifying and supporting productive interactions in project-based learning environments.\n","PeriodicalId":44588,"journal":{"name":"Information and Learning Sciences","volume":"62 1","pages":""},"PeriodicalIF":1.6000,"publicationDate":"2022-03-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Information and Learning Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1108/ils-08-2020-0182","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"INFORMATION SCIENCE & LIBRARY SCIENCE","Score":null,"Total":0}
引用次数: 2
Abstract
Purpose
This study aims to uncover divergent collaboration in makerspaces using social network analysis to examine ongoing social relations and sequential data pattern mining to invesitgate temporal changes in social activities.
Design/methodology/approach
While there is a significant body of qualitative work on makerspaces, there is a lack of quantitative research identifying productive interactions in open-ended learning environments. This study explores the use of high frequency sensor data to capture divergent collaboration in a semester-long makerspace course, where students support each other while working on different projects.
Findings
The main finding indicates that students who diversely mix with others performed better in a semester-long course. Additional results suggest that having a certain balance of working individually, collaborating with other students and interacting with instructors maximizes performance, provided that sufficient alone time is committed to develop individual technical skills.
Research limitations/implications
These discoveries provide insight into how productive makerspace collaboration can occur within the framework of Divergent Collaboration Learning Mechanisms (Tissenbaum et al., 2017).
Practical implications
Identifying the diversity and sequence of social interactions could also increase instructor awareness of struggling students and having this data in real-time opens new doors for identifying (un)productive behaviors.
Originality/value
The contribution of this study is to explore the use of a sensor-based, data-driven, longitudinal approach in an ecologically valid setting to understand divergent collaboration in makerspaces. Finally, this study discusses how this work represents an initial step toward quantifying and supporting productive interactions in project-based learning environments.
本研究旨在利用社会网络分析来考察持续的社会关系,并利用序列数据模式挖掘来考察社会活动的时间变化,揭示创客空间中的发散性协作。设计/方法论/方法虽然有大量关于创客空间的定性研究,但缺乏确定开放式学习环境中富有成效的互动的定量研究。本研究探讨了在一个学期的创客空间课程中使用高频传感器数据来捕捉发散性协作,学生们在不同的项目中相互支持。主要的发现表明,在一个学期的课程中,与其他学生进行多样化交流的学生表现得更好。其他研究结果表明,如果有足够的独处时间来发展个人技术技能,那么在单独学习、与其他学生合作以及与教师互动之间取得一定的平衡,就能最大限度地提高成绩。研究局限/启示这些发现为在发散式协作学习机制的框架内如何实现富有成效的创客空间协作提供了洞见(Tissenbaum et al., 2017)。实际意义识别社会互动的多样性和顺序也可以提高教师对挣扎学生的认识,实时拥有这些数据为识别(非)生产性行为打开了新的大门。原创性/价值本研究的贡献在于探索在生态有效的环境中使用基于传感器的、数据驱动的纵向方法来理解创客空间中的发散性合作。最后,本研究讨论了这项工作如何代表了在基于项目的学习环境中量化和支持富有成效的互动的第一步。
期刊介绍:
Information and Learning Sciences advances inter-disciplinary research that explores scholarly intersections shared within 2 key fields: information science and the learning sciences / education sciences. The journal provides a publication venue for work that strengthens our scholarly understanding of human inquiry and learning phenomena, especially as they relate to design and uses of information and e-learning systems innovations.