Facebook图片和文字中的种族和民族:主题分析。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Shaniece Criss, Sarah M Gonzales, Heran Mane, Katrina Makres, Dalmondeh D Nayreau, Vaishnavi Bharadwaj, Hannah G Kim, Thu T Nguyen
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引用次数: 0

摘要

背景:Facebook等社交媒体平台提供了一个动态的公共空间,不同种族和民族背景的用户可以在这里分享与身份、政治和其他社会问题相关的内容。这些平台使少数族裔群体既可以挑战种族沉默,又可以表达文化自豪感。与此同时,它们使使用者受到种族主义和陈规定型观念的影响,从而通过社会心理压力对其身心健康产生负面影响。鉴于多模式通信的兴起,研究图像和文本以充分理解如何在数字空间中讨论种族和民族是至关重要的。目的:这项探索性的描述性研究旨在调查人们如何在Facebook上讨论种族和民族,并通过对带有图像和文本的种族和民族相关Facebook帖子的定性内容分析,专门研究与文化自豪感、团结、种族主义、反种族主义和政治相关的主题。这些主题反映了个人如何构建身份,与其他社会身份接触,以及如何在数字空间中驾驭社会政治话语。方法:采用混合归纳法-演绎法进行定性含量分析。使用CrowdTangle随机抽取了500个Facebook帖子,其中每年有100个帖子来自2019年至2023年。每篇文章都包含图片和文字,并包含至少一个与种族或民族相关的关键词。帖子被上传到GitHub进行存储,并上传到Label Studio进行编码。一本反复开发的代码本指导了分析,重点关注种族和民族的表现、种族相关话语的连续体和主题内容。所有的帖子都是双重编码的,直到达成80%的互译协议。其余的差异通过编码器共识来解决,以确保可靠性和一致性。通过主题分析巩固主题。结果:在2019年至2023年的500个Facebook帖子中,近三分之一的帖子缺乏明确的种族特异性,其中19.8%(99/500)与种族无关,11.2%(56/500)没有提到特定的种族或族裔群体。在确定的群体中,西班牙裔、多种族和移民社区是最常被提及的。共同的主题包括美国政治、文化自豪感、种族主义和刻板印象以及反种族主义。政治内容是最具交叉性的主题,而文化自豪感和种族主义相关的话语则因群体而异。反种族主义的帖子反映了全国对种族正义运动的反应。这些发现凸显了社交媒体上与种族有关的话语的微妙和不断发展的本质。结论:解释基于图片的帖子可能会很复杂,因为图片可能会以微妙的方式提及种族和民族,但没有明确提及,或者当图像中描绘的观点与文本中存在矛盾时。在Facebook上解读这一过程可以帮助研究人员提高社交媒体上种族主义的积极影响,减少其有害影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Race and Ethnicity in Facebook Images and Text: Thematic Analysis.

Race and Ethnicity in Facebook Images and Text: Thematic Analysis.

Race and Ethnicity in Facebook Images and Text: Thematic Analysis.

Race and Ethnicity in Facebook Images and Text: Thematic Analysis.

Background: Social media platforms, such as Facebook, provide a dynamic public space where users of various racial and ethnic backgrounds share content related to identity, politics, and other social issues. These platforms allow racially minoritized groups to both challenge racial silencing and express cultural pride. At the same time, they expose users to racism and stereotypes that can negatively affect their mental and physical health through psychosocial stress. Given the rise of multimodal communication, it is essential to study both images and text to fully understand how race and ethnicity are discussed in digital spaces.

Objective: This exploratory, descriptive study aimed to investigate how people discuss race and ethnicity on Facebook and specifically examine themes related to cultural pride, solidarity, racism, antiracism, and politics using qualitative content analysis of race- and ethnicity-related Facebook posts with images and text. These themes reflect how individuals construct identity, engage with other social identities, and navigate sociopolitical discourse in digital spaces.

Methods: We conducted a qualitative content analysis using a hybrid inductive-deductive approach. A total of 500 multimodal Facebook posts were randomly sampled using CrowdTangle, with 100 posts from each year between 2019 and 2023. Each post included both image and text and contained at least 1 race- or ethnicity-related keyword. Posts were uploaded to GitHub for storage and to Label Studio for coding. An iteratively developed codebook guided the analysis, focusing on representations of race and ethnicity, the continuum of race-related discourse, and topical content. All posts were double coded until an 80% interrater agreement was reached. The remaining discrepancies were resolved through coder consensus to ensure reliability and consistency. Themes were solidified through thematic analysis.

Results: Across 500 Facebook posts from 2019 to 2023, nearly one-third lacked clear racial specificity, with 19.8% (99/500) unrelated to race and 11.2% (56/500) mentioning no specific racial or ethnic group. Among the identified groups, Hispanic, multiracial, and immigrant communities were the most frequently referenced. Common themes included US politics, cultural pride, racism and stereotypes, and antiracism. Political content was the most crosscutting theme, while cultural pride and racism-related discourse varied by group. Antiracism posts reflected the national response to racial justice movements. These findings highlight the nuanced and evolving nature of race-related discourse on social media.

Conclusions: It can be complicated to interpret image-based posts because of the subtle ways in which an image may reference race and ethnicity but does not explicitly mention it, or when there is a contradiction in the ideas portrayed in the image versus the text. Decoding this process on Facebook can help researchers boost the positive impacts and reduce the harmful effects of racism on social media.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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