基于Facebook数据挖掘的大五人格数字表现型:一项元分析

D. Marengo, C. Montag
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引用次数: 31

摘要

背景:目前全球有27亿人使用Facebook的产品,如Instagram、WhatsApp或Facebook本身。这些在线平台属于世界上最重要的社交媒体/信使应用程序,尤其是西方人对这个话题的看法。目的:科学界正在兴起一项运动,旨在通过研究这些平台上留下的数字足迹来预测心理特征和状态。特别是,一些研究人员已经证明,通过Facebook上发布的文本来预测性格是可行的,也可以通过一个人的“喜欢”行为等等来预测性格。方法:在本工作中,我们对现有的从Facebook预测人格的文献进行了荟萃分析。结果:结果表明,平均而言,挖掘Facebook数据预测用户个性得分的准确率为中等(r = 0.33)。讨论:目前,从社交媒体和智能手机数据中预测个性是可行的,但远非完美。因此,目前根据这些数据的预测不能在个人层面上进行。但在不久的将来,随着更多可用的数据集和更复杂的人工智能分析策略的应用,这种情况可能会发生变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital Phenotyping of Big Five Personality via Facebook Data Mining: A Meta-Analysis
Background: 2.7 billion people around the world currently use a product from Facebook such as Instagram, WhatsApp or Facebook itself. These online platforms belong to the most important social media/messenger applications in the world, in particular with a Western view on this topic. Objectives: A growing movement in the scientific community aims to predict psychological traits and states via the study of digital footprints left on these platforms. In particular several researchers demonstrated already that it is feasible to predict personality from posted text on Facebook, but also from a person’s “Like” behavior and so forth. Methods: In the present work we carried out a meta-analysis on the available literature predicting personality from Facebook. Results: Results showed that on average, the accuracy of prediction of user personality scores by mining Facebook data is moderate (r = .33). Discussions: Currently, personality-predictions from social media and smartphone data are feasible, but far away from perfect. Therefore, current predictions from this data cannot be made on individual level. In the near future though, with both more data sets available and more elaborate analysis strategies from artificial intelligence to be applied, this might change.
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