Sentiments in Social Context of Student Modelling

Regina Motz, Ofelia Cervantes, Paula Echenique
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Abstract

Social learning analytics is an emerging discipline that offers new methods to explore data from online educational devices in order to obtain a better understanding of student behavior. As learning takes place in heterogeneous and complex online environments, the incorporation of contextual information about the student has attracted major interest. For some time, most methods of student modelling have considered interactions as a key dimension of the student's social context, but only recently, automatic extraction software agents begin to tackle interactions in a non-exclusively quantitative way. In this paper, we propose the discovery of sentiments in online social interactions as an additional property for the modeling of students in order to produce a contextualized diagnosis when performing learning analytics. We propose answers to the questions of "Which are the sentiments in students context modeling?", "Why are they important for social learning analytics?", "How can we visualize them?"
学生造型的社会情境情感
社会学习分析是一门新兴学科,它提供了新的方法来探索来自在线教育设备的数据,以便更好地了解学生的行为。由于学习发生在异构和复杂的在线环境中,学生的上下文信息的整合引起了人们的极大兴趣。一段时间以来,大多数学生建模方法都将交互视为学生社会背景的一个关键维度,但直到最近,自动提取软件代理才开始以非排他的定量方式处理交互。在本文中,我们提出在线社交互动中的情感发现作为学生建模的附加属性,以便在执行学习分析时产生情境化诊断。我们提出了以下问题的答案:“哪些是学生情境建模中的情感?”,“为什么它们对社会学习分析很重要?”,“我们如何将它们可视化?”
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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