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Towards identifying collaborative learning groups using social media: How Social Media can contribute to spountaniously initiated collaborative learning

机译:使用社交媒体识别协作学习群体:社交媒体如何有助于因陷入陈评不不市的协作学习

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This work reports about the preliminary results and ongoing research based upon profiling collaborative learning groups of persons within the social micro-blogging platforms like Twitter1 that share potentially common interests on special topic. Hereby the focus is held on spontaneously initiated collaborative learning in Social Media and detection of collaborative learning groups based upon their communication dynamics. Research questions targeted to be answered are: are there any useful data mining algorithms to fulfill the task of pre-selection and clustering of users in social networks, how good do they perform, and what are the metrics that could be used for detection and evaluation in the realm of this task. Basic approach presented here uses as preamble hypothesis that users and their interests in Social Networks can be identified through content generated by them and content they consume. Special focus is held on topic oriented approach as least common bounding point. Those should be also the basic criteria used to detect and outline the learning groups. The aim of this work is to deliver first scientific pre-work for successfully implementation of recommender systems using social network metrics and content features of social network users for the purposes of better learning group communication and information consumption.
机译:这项工作报告了基于在Twitter 1 这样的社交微博平台中的人员内部分析的初步结果和正在进行的研究,如Twitter 1 在特殊主题上分享可能的共同利益。因此,在社交媒体上自发地启动的协作学习和基于他们的通信动态的协作学习群体进行重点。有针对性的研究问题是:是否有任何有用的数据挖掘算法,以满足社交网络中用户预选和聚类的任务,它们的表现有多好,以及可用于检测和评估的度量标准在这个任务的领域。这里呈现的基本方法用作序言假设,即用户及其在社交网络中的兴趣可以通过它们生成的内容和他们消耗的内容来识别。特别焦点在主导的方法上保持最小常见的边界点。那些应该是用于检测和概述学习群体的基本标准。这项工作的目的是为使用社交网络指标和社交网络用户的内容特征来提供第一个科学预订,以便更好地学习组通信和信息消耗的目的。

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