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Mining Social Media Data for Understanding Students’ Learning Experiences

机译:挖掘社交媒体数据以了解学生的学习经历

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Students’ informal conversations on social media (e.g., Twitter, Facebook) shed light into their educational experiences—opinions, feelings, and concerns about the learning process. Data from such uninstrumented environments can provide valuable knowledge to inform student learning. Analyzing such data, however, can be challenging. The complexity of students’ experiences reflected from social media content requires human interpretation. However, the growing scale of data demands automatic data analysis techniques. In this paper, we developed a workflow to integrate both qualitative analysis and large-scale data mining techniques. We focused on engineering students’ Twitter posts to understand issues and problems in their educational experiences. We first conducted a qualitative analysis on samples taken from about 25,000 tweets related to engineering students’ college life. We found engineering students encounter problems such as heavy study load, lack of social engagement, and sleep deprivation. Based on these results, we implemented a multi-label classification algorithm to classify tweets reflecting students’ problems. We then used the algorithm to train a detector of student problems from about 35,000 tweets streamed at the geo-location of Purdue University. This work, for the first time, presents a methodology and results that show how informal social media data can provide insights into students’ experiences.
机译:学生在社交媒体(例如Twitter,Facebook)上的非正式对话为他们的教育经历提供了亮点-意见,感觉和对学习过程的担忧。来自此类非仪器环境的数据可以提供有价值的知识,以指导学生学习。但是,分析此类数据可能具有挑战性。从社交媒体内容反映出的学生体验的复杂性需要人工解释。但是,数据规模的增长需要自动数据分析技术。在本文中,我们开发了将定性分析和大规模数据挖掘技术集成在一起的工作流。我们专注于工程专业学生的Twitter帖子,以了解他们在学习过程中遇到的问题。我们首先对大约25,000条与工科学生的大学生活相关的推文进行了定性分析。我们发现工程专业的学生会遇到很多问题,例如沉重的学习负担,缺乏社交参与和睡眠不足。基于这些结果,我们实施了多标签分类算法,对反映学生问题的推文进行分类。然后,我们使用该算法训练了来自普渡大学地理位置的35,000条推文中的学生问题检测器。这项工作首次展示了一种方法论和结果,展示了非正式的社交媒体数据如何提供对学生体验的见解。

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