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User-Level Race and Ethnicity Predictors from Twitter Text

机译:Twitter文本中的用户级种族和种族预测因子

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User demographic inference from social media text has the potential to improve a range of downstream applications, including real-time passive polling or quantifying demographic bias. This study focuses on developing models for user-level race and ethnicity prediction. We introduce a data set of users who self-report their race/ethnicity through a survey, in contrast to previous approaches that use distantly supervised data or perceived labels. We develop predictive models from text which accurately predict the membership of a user to the four largest racial and ethnic groups with up to .884 AUC and make these available to the research community.
机译:来自社交媒体文本的用户人口统计推断有可能改善一系列下游应用程序,包括实时被动轮询或量化人口统计偏差。这项研究的重点是开发用于用户级别的种族和种族预测的模型。与以前使用远距离监管数据或感知标签的方法相比,我们引入了一个通过调查自我报告其种族/民族的用户的数据集。我们会从文本中开发出预测模型,以准确地预测用户的会员资格,这四个最大的种族和族裔群体的AUC最高为.884,并将其提供给研究社区。

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