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Viral Visualizations: How Coronavirus Skeptics Use Orthodox Data Practices to Promote Unorthodox Science Online

Published: 07 May 2021 Publication History

Editorial Notes

A corrigendum was issued for this paper on July 13, 2021. You can download the corrigendum from the supplemental material section of this citation page.

Abstract

Controversial understandings of the coronavirus pandemic have turned data visualizations into a battleground. Defying public health officials, coronavirus skeptics on US social media spent much of 2020 creating data visualizations showing that the government’s pandemic response was excessive and that the crisis was over. This paper investigates how pandemic visualizations circulated on social media, and shows that people who mistrust the scientific establishment often deploy the same rhetorics of data-driven decision-making used by experts, but to advocate for radical policy changes. Using a quantitative analysis of how visualizations spread on Twitter and an ethnographic approach to analyzing conversations about COVID data on Facebook, we document an epistemological gap that leads pro- and anti-mask groups to draw drastically different inferences from similar data. Ultimately, we argue that the deployment of COVID data visualizations reflect a deeper sociopolitical rift regarding the place of science in public life.

Supplementary Material

3445211-corrigendum (3445211-corrigendum.pdf)
Corrigendum to "Viral Visualizations: How Coronavirus Skeptics Use Orthodox Data Practices to Promote Unorthodox Science Online" by Lee et al., Proceedings of the 2021 CHI Conference on Human Factors in Computing Systems (CHI '21).
Supplementary Materials (3411764.3445211_supplementalmaterials.zip)

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  1. Viral Visualizations: How Coronavirus Skeptics Use Orthodox Data Practices to Promote Unorthodox Science Online
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      CHI '21: Proceedings of the 2021 CHI Conference on Human Factors in Computing Systems
      May 2021
      10862 pages
      ISBN:9781450380966
      DOI:10.1145/3411764
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      Published: 07 May 2021

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      • (2024)Mitigating Epistemic Injustice: The Online Construction of a Bisexual CultureACM Transactions on Computer-Human Interaction10.1145/3648614Online publication date: 16-Feb-2024
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