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Two Tier Analysis of Social Media Collaboration for Student Migration

机译:面向学生迁移的社交媒体协作的两个层次分析

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Global adoption of Social Media as the preferred medium for collaboration and information exchange is increasingly reshaping social realities and facilitating new research methodologies in various disciplines. Social Media applications are collecting a large amount of User-Generated Content (UGC) and web data that contains knowledge about novel approaches of global collaboration between people. We have done a detailed study of the factors that lead to student migration, as espoused by social scientists, and compared it with factors observed by analyzing over 10 million Twitter posts. Using the gravity model as our baseline, we built a novel methodology to identify the features and facts that twitter posts offer for studying human collaboration during migration. We leveraged methods from Natural Language Processing (NLP) to extract contents specific to migration from social media posts. We used topic modeling-Latent Dirichlet Allocation (LDA) to extract the topics from tweets and word embedding-Word to vector (W2V) to find the correlation and similarity between UGC and socioeconomics theories. In this paper, we present our methodology in detail, along with the results of our analysis.
机译:全球采用社交媒体作为合作和信息交流的首选媒介,这正在日益重塑社会现实,并促进各种学科的新研究方法。社交媒体应用程序正在收集大量用户生成的内容(UGC)和Web数据,其中包含有关人与人之间全球协作的新颖方法的知识。我们已对社会科学家所倡导的导致学生迁移的因素进行了详细研究,并将其与通过分析超过1000万个Twitter帖子所观察到的因素进行了比较。使用引力模型作为基准,我们构建了一种新颖的方法来识别Twitter帖子为研究迁移过程中的人类协作提供的功能和事实。我们利用自然语言处理(NLP)的方法从社交媒体帖子中提取特定于迁移的内容。我们使用主题建模-潜在狄利克雷分配(LDA)从推文和词嵌入中提取主题-词到向量(W2V),以找出教资会与社会经济学理论之间的相关性和相似性。在本文中,我们将详细介绍我们的方法以及分析结果。

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