Quantifying generalized trust in individuals and counties using language

Salvatore Giorgi, Jason Jeffrey Jones, Anneke Buffone, J. Eichstaedt, P. Crutchley, D. Yaden, Jeanette Elstein, Mohammadzaman Zamani, Jennifer Kregor, Laura K Smith, Martin E. P. Seligman, Margaret L. Kern, L. Ungar, H. A. Schwartz
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Abstract

Trust is predictive of civic cooperation and economic growth. Recently, the U.S. public has demonstrated increased partisan division and a surveyed decline in trust in institutions. There is a need to quantify individual and community levels of trust unobtrusively and at scale. Using observations of language across more than 16,000 Facebook users, along with their self-reported generalized trust score, we develop and evaluate a language-based assessment of generalized trust. We then apply the assessment to more than 1.6 billion geotagged tweets collected between 2009 and 2015 and derive estimates of trust across 2,041 U.S. counties. We find generalized trust was associated with more affiliative words (love, we, and friends) and less angry words (hate and stupid) but only had a weak association with social words primarily driven by strong negative associations with general othering terms (“they” and “people”). At the county level, associations with the Centers for Disease Control and Prevention (CDC) and Gallup surveys suggest that people in high-trust counties were physically healthier and more satisfied with their community and their lives. Our study demonstrates that generalized trust levels can be estimated from language as a low-cost, unobtrusive method to monitor variations in trust in large populations.
用语言量化对个人和国家的普遍信任
信任能够促进公民合作和经济增长。近来,美国公众的党派分歧加剧,对机构的信任度也在下降。因此,有必要对个人和社区的信任度进行大规模、不显眼的量化。通过观察 16,000 多名 Facebook 用户的语言及其自我报告的普遍信任分数,我们开发并评估了一种基于语言的普遍信任评估方法。然后,我们将该评估应用于 2009 年至 2015 年间收集的超过 16 亿条带有地理标记的推文,并得出美国 2041 个县的信任度估计值。我们发现广义信任与更多的关联词(爱、我们和朋友)和较少的愤怒词(恨和愚蠢)相关,但与社交词的关联较弱,这主要是由与一般他者化词语("他们 "和 "人们")的强烈负面关联驱动的。在县一级,与疾病控制和预防中心(CDC)和盖洛普调查的关联表明,高信任度县的人们身体更健康,对社区和生活更满意。我们的研究表明,可以从语言中估算出普遍信任度,这是一种低成本、无干扰的方法,可以监测大量人口中信任度的变化。
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