期刊文献+

xAPI在移动学习中获取经历数据的应用研究

The research on obtaining experience data of xAPI in mobile learning
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摘要 由于现在网络资源的不断丰富,移动学习变得越来越流行,而之前活跃在在线学习的SCORM(Sharable Content Object Reference Model,可共享内容对象参考模型)技术标准要依赖于平台而存在,已经不能满足当前需要。针对目前广泛普及的移动终端,提出了利用新一代的标准x API(Tin Can API,也叫Experience API)进行移动学习经历的记录。首先对x API和移动学习作一些简单的介绍,了解学习数据的重要性和该标准下的数据格式,然后对具体的应用进行模型说明。原则上,x API可以在移动端,如安卓客户端进行学习经历数据的获取,并且进行分析得出学习过程中的知识重点。 Nowadays, e-learning is becoming more and more popular due to the abundant network resources. SCORM(Sharable Content Object Reference Model) is active in online learning but depends on the platform, which cannot meet the current needs, now, For the mobile terminals are widely used, the mobile learning is proposed by u- sing the new generation of standard xAPI (Tin Can API, also known as Experience API) to obtain experience data. First of all, this paper makes some simple introduction about xAPI and mobile learning to express the importance of learning data and the data format. And then explains the specific model of the application, xAPI can be used in the mobile App, such as Android clients. It can obtain experience data and do some simple analysis.
出处 《激光杂志》 北大核心 2017年第6期184-189,共6页 Laser Journal
基金 重庆市集成示范计划项目(csct2014jcsf40002) 重庆市科技研发基地能力提升项目(cstc2014pt-gc40004)
关键词 X API 移动学习 经历数据 xAPI mobile learning experience data
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