Correcting Sociodemographic Selection Biases for Population Prediction from Social Media

Salvatore Giorgi, Veronica E. Lynn, Keshav Gupta, F. Ahmed, S. Matz, Lyle Ungar, H. A. Schwartz
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引用次数: 11

Abstract

Social media is increasingly used for large-scale population predictions, such as estimating community health statistics. However, social media users are not typically a representative sample of the intended population - a "selection bias". Within the social sciences, such a bias is typically addressed with restratification techniques, where observations are reweighted according to how under- or over-sampled their socio-demographic groups are. Yet, restratifaction is rarely evaluated for improving prediction. In this two-part study, we first evaluate standard, "out-of-the-box" restratification techniques, finding they provide no improvement and often even degraded prediction accuracies across four tasks of esimating U.S. county population health statistics from Twitter. The core reasons for degraded performance seem to be tied to their reliance on either sparse or shrunken estimates of each population's socio-demographics. In the second part of our study, we develop and evaluate Robust Poststratification, which consists of three methods to address these problems: (1) estimator redistribution to account for shrinking, as well as (2) adaptive binning and (3) informed smoothing to handle sparse socio-demographic estimates. We show that each of these methods leads to significant improvement in prediction accuracies over the standard restratification approaches. Taken together, Robust Poststratification enables state-of-the-art prediction accuracies, yielding a 53.0% increase in variance explained (R 2) in the case of surveyed life satisfaction, and a 17.8% average increase across all tasks.
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纠正社会人口选择偏差对社会媒体人口预测的影响
社交媒体越来越多地用于大规模人口预测,例如估计社区卫生统计数据。然而,社交媒体用户通常不是目标人群的代表性样本——这是一种“选择偏差”。在社会科学中,这种偏见通常是通过重新调整技术来解决的,即根据其社会人口群体的抽样不足或过度程度对观察结果进行重新加权。然而,重组很少被评估为改善预测。在这个由两部分组成的研究中,我们首先评估了标准的、“开箱即用”的重新定义技术,发现它们没有提供任何改进,甚至经常降低了从Twitter估计美国县人口健康统计数据的四项任务的预测准确性。表现下降的核心原因似乎与他们依赖于对每个人口的社会人口统计数据的稀疏或缩小的估计有关。在我们的研究的第二部分,我们开发和评估稳健后分层,它包括三种方法来解决这些问题:(1)估计量再分配,以考虑萎缩,以及(2)自适应分形和(3)平滑处理稀疏的社会人口估计。我们表明,这些方法中的每一种都比标准的重构方法显著提高了预测精度。综上所述,鲁棒后分层使最先进的预测准确性,在调查生活满意度的情况下,方差解释(r2)增加53.0%,所有任务平均增加17.8%。
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