Predicting Dark Triad Personality Traits from Twitter Usage and a Linguistic Analysis of Tweets

Chris Sumner, A. Byers, Rachel Boochever, Gregory J. Park
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引用次数: 266

Abstract

Social media sites are now the most popular destination for Internet users, providing social scientists with a great opportunity to understand online behaviour. There are a growing number of research papers related to social media, a small number of which focus on personality prediction. To date, studies have typically focused on the Big Five traits of personality, but one area which is relatively unexplored is that of the anti-social traits of narcissism, Machiavellians and psychopathy, commonly referred to as the Dark Triad. This study explored the extent to which it is possible to determine anti-social personality traits based on Twitter use. This was performed by comparing the Dark Triad and Big Five personality traits of 2,927 Twitter users with their profile attributes and use of language. Analysis shows that there are some statistically significant relationships between these variables. Through the use of crowd sourced machine learning algorithms, we show that machine learning provides useful prediction rates, but is imperfect in predicting an individual's Dark Triad traits from Twitter activity. While predictive models may be unsuitable for predicting an individual's personality, they may still be of practical importance when models are applied to large groups of people, such as gaining the ability to see whether anti-social traits are increasing or decreasing over a population. Our results raise important questions related to the unregulated use of social media analysis for screening purposes. It is important that the practical and ethical implications of drawing conclusions about personal information embedded in social media sites are better understood.
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从推特的使用和推特的语言分析预测黑暗人格特质
社交媒体网站现在是互联网用户最受欢迎的目的地,为社会科学家提供了一个了解在线行为的绝佳机会。与社交媒体相关的研究论文越来越多,其中一小部分专注于人格预测。迄今为止,研究主要集中在人格的五大特征上,但一个相对未被探索的领域是自恋、马基雅维利主义者和精神病等反社会特征,通常被称为黑暗三合一。这项研究探讨了在多大程度上可以根据Twitter的使用情况来确定反社会人格特征。研究人员将2927名推特用户的黑暗人格特质和大五人格特质与他们的个人资料属性和语言使用进行了比较。分析表明,这些变量之间存在一些统计上显著的关系。通过使用众包机器学习算法,我们表明机器学习提供了有用的预测率,但在从Twitter活动预测个人的黑暗三合一特征方面并不完美。虽然预测模型可能不适合预测个人的性格,但当模型应用于大群体时,它们可能仍然具有实际重要性,例如获得观察反社会特征在人群中是增加还是减少的能力。我们的研究结果提出了一些重要的问题,这些问题与不受监管地使用社交媒体分析进行筛选有关。重要的是,对社交媒体网站中嵌入的个人信息得出结论的实践和伦理意义得到更好的理解。
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