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Twitter-based measures of neighborhood sentiment as predictors of residential population health

机译:基于Twitter的邻里情绪测度作为居民人口健康的预测指标

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摘要

Several studies have recently applied sentiment-based lexicons to Twitter to gauge local sentiment to understand health behaviors and outcomes for local areas. While this research has demonstrated the vast potential of this approach, lingering questions remain regarding the validity of Twitter mining and surveillance in local health research. First, how well does this approach predict health outcomes at very local scales, such as neighborhoods? Second, how robust are the findings garnered from sentiment signals when accounting for spatial effects? To evaluate these questions, we link 2,076,025 tweets from 66,219 distinct users in the city of San Diego over the period of 2014-12-06 to 2017-05-24 to the 500 Cities Project data and 2010–2014 American Community Survey data. We determine how well sentiment predicts self-rated mental health, sleep quality, and heart disease at a census tract level, controlling for neighborhood characteristics and spatial autocorrelation. We find that sentiment is related to some outcomes on its own, but these relationships are not present when controlling for other neighborhood factors. Evaluating our encoding strategy more closely, we discuss the limitations of existing measures of neighborhood sentiment, calling for more attention to how race/ethnicity and socio-economic status play into inferences drawn from such measures.
机译:最近有几项研究在Twitter上应用了基于情感的词典,以评估当地的情感,以了解当地的健康行为和结果。尽管这项研究证明了这种方法的巨大潜力,但有关Twitter挖掘和监视在当地健康研究中的有效性的疑问仍然存在。首先,这种方法在非常局部的规模(如社区)中如何预测健康结果?其次,在考虑空间效应时,从情感信号中得出的结论有多强?为了评估这些问题,我们将2014-12-06至2017-05-24期间来自圣地亚哥市66,219位不同用户的2,076,025条推文与500个城市项目数据和2010-2014年美国社区调查数据相链接。我们确定情绪如何在人口普查水平上预测自我评估的心理健康,睡眠质量和心脏病,并控制邻里特征和空间自相关。我们发现,情绪本身与某些结果相关,但是在控制其他邻域因素时,这些关系并不存在。我们将更仔细地评估我们的编码策略,讨论现有邻里情绪测度的局限性,呼吁人们更加关注种族/民族和社会经济地位如何从这些测度中推论出来。

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