邻家小姐与流浪汉:邻家社交网络中现实世界不平等的在线表现

Waleed Iqbal, Vahid Ghafouri, Gareth Tyson, Guillermo Suarez-Tangil, Ignacio Castro
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引用次数: 0

摘要

从健康到教育,收入影响着大量的生活选择。早期的研究利用了在线社交网络的数据来精确地研究这种影响。在本文中,我们提出了一个相反的问题:不同的收入水平是否会导致不同的在线行为?我们证明了这一点。我们提出了Nextdoor的第一个大规模研究,一个流行的基于位置的社交网络。我们收集了来自美国64,283个社区和英国3,325个社区的260万篇帖子,以检验在线话语是否反映了一个社区的收入和收入不平等。我们发现,来自不同收入社区的帖子确实存在差异,例如,富裕社区的情绪更积极,讨论犯罪的次数更多,尽管他们的实际犯罪率要低得多。然后,我们证明了用户生成的内容可以预测收入和不平等。我们训练了多个机器学习模型,并预测了收入(R2=0.841)和不平等(R2=0.77)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lady and the Tramp Nextdoor: Online Manifestations of Real-World Inequalities in the Nextdoor Social Network
From health to education, income impacts a huge range of life choices. Earlier research has leveraged data from online social networks to study precisely this impact. In this paper, we ask the opposite question: do different levels of income result in different online behaviors? We demonstrate it does. We present the first large-scale study of Nextdoor, a popular location-based social network. We collect 2.6 Million posts from 64,283 neighborhoods in the United States and 3,325 neighborhoods in the United Kingdom, to examine whether online discourse reflects the income and income inequality of a neighborhood. We show that posts from neighborhoods with different incomes indeed differ, e.g. richer neighborhoods have a more positive sentiment and discuss crimes more, even though their actual crime rates are much lower. We then show that user-generated content can predict both income and inequality. We train multiple machine learning models and predict both income (R2=0.841) and inequality (R2=0.77).
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