Social media data as a lens onto care-seeking behavior among women veterans of the US armed forces

Kacie Kelly, Alex B. Fine, Glen A. Coppersmith
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引用次数: 3

Abstract

In this article, we examine social media data as a lens onto support-seeking among women veterans of the US armed forces. Social media data hold a great deal of promise as a source of information on needs and support-seeking among individuals who are excluded from or systematically prevented from accessing clinical or other institutions ostensibly designed to support them. We apply natural language processing (NLP) techniques to more than 3 million Tweets collected from 20,000 Twitter users. We find evidence that women veterans are more likely to use social media to seek social and community engagement and to discuss mental health and veterans’ issues significantly more frequently than their male counterparts. By contrast, male veterans tend to use social media to amplify political ideologies or to engage in partisan debate. Our results have implications for how organizations can provide outreach and services to this uniquely vulnerable population, and illustrate the utility of non-traditional observational data sources such as social media to understand the needs of marginalized groups.
社交媒体数据作为美国武装部队女退伍军人求医行为的一个镜头
在这篇文章中,我们研究了社交媒体数据,作为美国武装部队女性退伍军人寻求支持的镜头。社交媒体数据很有希望成为了解那些被排除在外或被系统地阻止进入表面上旨在支持他们的临床或其他机构的个人的需求和寻求支持的信息来源。我们将自然语言处理(NLP)技术应用于从20,000名Twitter用户收集的300多万条tweet。我们发现有证据表明,女性退伍军人比男性退伍军人更有可能使用社交媒体寻求社会和社区参与,并更频繁地讨论心理健康和退伍军人问题。相比之下,男性退伍军人倾向于利用社交媒体放大政治意识形态或参与党派辩论。我们的研究结果对组织如何向这一独特的弱势群体提供外展和服务具有启示意义,并说明了非传统观察数据源(如社交媒体)在了解边缘化群体需求方面的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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