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引用次数: 3
摘要
本文介绍了使用主题模型和丰富的情感分析形式从社交媒体数据中提取群体身份的初步结果,该分析旨在与心理验证的情绪状态相对应。我们的方法是基于这样一个社会学概念,即群体认同是行为改变的基础。我们首先通过结合有关主题内容和情感的信息,从社交媒体文本数据中推断社会价值。其次,推断群体是社交媒体作者个体与社会价值观之间中介的潜在变量。本文提出了一个主题模型,扩展了Paul和Dredze[2]所使用的Ailment topic Aspect model (ATAM),并将其应用于从Media Cloud[3]每日更新中提取的大量博客数据。我们还提供了模型输出的定性和定量分析。
Extracting social values and group identities from social media text data
This paper presents preliminary results on the extraction of group identities from social media data using topic models and a rich form of sentiment analysis that is designed to correspond to psychologically-validated emotional states. Our approach is based upon the sociological notion that group identity forms the basis for behavioral change [1]. We begin by inferring social values from social media text data by combining information regarding topic content and sentiment. Next, groups are inferred as a latent variable mediating between individual social media authors and social values. A topic model is proposed, extending the Ailment Topic Aspect Model (ATAM) used by Paul and Dredze [2], and applied to a large set of blog data extracted from the Media Cloud [3] daily updates. We also provide a qualitative and quantitative analysis of model outputs.