2022
DOI: 10.31219/osf.io/ky6th
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Misleading Beyond Visual Tricks: How People Actually Lie with Charts

Abstract: Data visualizations can empower an audience to make informed decisions. At the same time, deceptive representations of data can lead to inaccurate interpretations while still providing an illusion of data-driven insights. Existing research on misleading visualizations primarily focuses on examples of charts and techniques previously reported to be deceptive. These approaches do not necessarily describe how charts mislead the general population in practice. We instead present an analysis of data visualizations … Show more

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Cited by 4 publications
(11 citation statements)
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“…Yet, one does not even need to use fake information, only to have an automated tool capable of choosing convenient half‐truths to support a position, querying the needed data and then creating beautiful and convincing visualizations that can be easily spread through unregulated social media channels. Further, most visual deception carried out on social media does not even require graphically tricking the user, rather data mirages like cherry‐picking are more than sufficient [LPLK23].…”
Section: Discussionmentioning
confidence: 99%
“…Yet, one does not even need to use fake information, only to have an automated tool capable of choosing convenient half‐truths to support a position, querying the needed data and then creating beautiful and convincing visualizations that can be easily spread through unregulated social media channels. Further, most visual deception carried out on social media does not even require graphically tricking the user, rather data mirages like cherry‐picking are more than sufficient [LPLK23].…”
Section: Discussionmentioning
confidence: 99%
“…These are shared to help further bolster the idea that research in the sports media domain has has potential to contribute to the broader area of misinformative visualizations research. First, [7] finds examples of data visualizations on Twitter containing COVID-19 data. In their paper, they classify visualizations which abuse design principles (like using truncated axes or poor encoding) or use poor reasoning (like cherry-picking or misrepresentation of data).…”
Section: Misinformative Data Visualization Studiesmentioning
confidence: 99%
“…Prior work has documented the potential of data visualizations to mislead their audience, both through deceptive features of visualization design that interfere with viewers' ability to accurately read off values from a chart [1,2,3] and through logical fallacies and confirmation bias that result in visualizations supporting misinformation arguments [5,6]. Lee et al [5] discuss that in online COVID-19 discourse, oftentimes pro-and anti-mask communities used the same visualizations to argue for opposing views.…”
Section: Visual Misinformation Onlinementioning
confidence: 99%
“…Prior work highlighted the potential for static data visualizations to mislead [1,2,3] and documented biases that may arise when performing data analysis or viewing data visualizations in general [4], and specifically those shared on social media [5,6]. In the realm of interactive data visualizations, issues such as the multiple comparisons problem (MCP) [7], the forking paths problem [8], or the impacts of aggregation choices [9] in visual analytics systems are known to lead viewers-especially untrained viewers-towards dichotomous thinking and making false discoveries and generalizations in data.…”
Section: Introductionmentioning
confidence: 99%
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