推文中身份使用模式的探索:一个新问题、解决方案和案例研究

K. Joseph, Wei Wei, Kathleen M. Carley
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引用次数: 10

摘要

长期以来,社会学家一直对人们的身份或标签在不同社会背景下的创造、使用和应用方式感兴趣。本文对身份研究,特别是文本中的身份研究做出了两方面的贡献。我们首先考虑以下新颖的NLP任务:给定一组文本数据(这里来自Twitter),将文本中的每个单词标记为代表(可能是多单词)身份。为了完成这项任务,我们开发了一个综合的特征集,利用Twitter上最近NLP工作的几种途径,并使用这些特征来训练监督分类器。我们的模型比基于规则的基线高出33%。然后,我们将我们的模型用于案例研究,将其应用于积极讨论埃里克·加纳和迈克尔·布朗案件的用户的大型Twitter数据语料库。在其他发现中,我们观察到,基于来自人口普查数据的社会背景测量,个人使用的身份以有趣的方式不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Patterns of Identity Usage in Tweets: A New Problem, Solution and Case Study
Sociologists have long been interested in the ways that identities, or labels for people, are created, used and applied across various social contexts. The present work makes two contributions to the study of identity, in particular the study of identity in text. We first consider the following novel NLP task: given a set of text data (here, from Twitter), label each word in the text as being representative of a (possibly multi-word) identity. To address this task, we develop a comprehensive feature set that leverages several avenues of recent NLP work on Twitter and use these features to train a supervised classifier. Our model outperforms a surprisingly strong rule-based baseline by 33%. We then use our model for a case study, applying it to a large corpora of Twitter data from users who actively discussed the Eric Garner and Michael Brown cases. Among other findings, we observe that the identities used by individuals differ in interesting ways based on social context measures derived from census data.
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