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多重预测可视化(MFV):多种新冠疫情预测可视化中的信任与性能权衡

Multiple Forecast Visualizations (MFVs): Trade-offs in Trust and Performance in Multiple COVID-19 Forecast Visualizations.

作者信息

Padilla Lace, Fygenson Racquel, Castro Spencer C, Bertini Enrico

出版信息

IEEE Trans Vis Comput Graph. 2023 Jan;29(1):12-22. doi: 10.1109/TVCG.2022.3209457. Epub 2022 Dec 16.

DOI:10.1109/TVCG.2022.3209457
PMID:36166555
Abstract

The prevalence of inadequate SARS-COV-2 (COVID-19) responses may indicate a lack of trust in forecasts and risk communication. However, no work has empirically tested how multiple forecast visualization choices impact trust and task-based performance. The three studies presented in this paper ( N=1299) examine how visualization choices impact trust in COVID-19 mortality forecasts and how they influence performance in a trend prediction task. These studies focus on line charts populated with real-time COVID-19 data that varied the number and color encoding of the forecasts and the presence of best/worst-case forecasts. The studies reveal that trust in COVID-19 forecast visualizations initially increases with the number of forecasts and then plateaus after 6-9 forecasts. However, participants were most trusting of visualizations that showed less visual information, including a 95% confidence interval, single forecast, and grayscale encoded forecasts. Participants maintained high trust in intervals labeled with 50% and 25% and did not proportionally scale their trust to the indicated interval size. Despite the high trust, the 95% CI condition was the most likely to evoke predictions that did not correspond with the actual COVID-19 trend. Qualitative analysis of participants' strategies confirmed that many participants trusted both the simplistic visualizations and those with numerous forecasts. This work provides practical guides for how COVID-19 forecast visualizations influence trust, including recommendations for identifying the range where forecasts balance trade-offs between trust and task-based performance.

摘要

对严重急性呼吸综合征冠状病毒2(SARS-CoV-2,即新冠病毒)应对措施不足的普遍存在,可能表明对预测和风险沟通缺乏信任。然而,尚无研究实证检验多种预测可视化选择如何影响信任和基于任务的表现。本文呈现的三项研究(N = 1299)考察了可视化选择如何影响对新冠病毒死亡率预测的信任,以及它们如何影响趋势预测任务中的表现。这些研究聚焦于填充有实时新冠病毒数据的折线图,这些折线图在预测的数量和颜色编码以及最佳/最坏情况预测的呈现方面有所不同。研究表明,对新冠病毒预测可视化的信任最初会随着预测数量的增加而上升,然后在6 - 9次预测后趋于平稳。然而,参与者最信任那些显示较少视觉信息的可视化,包括95%置信区间、单一预测以及灰度编码的预测。参与者对标记为50%和25%的区间保持高度信任,并且没有根据所指示的区间大小按比例调整他们的信任度。尽管信任度很高,但95%置信区间条件最有可能引发与实际新冠病毒趋势不相符的预测。对参与者策略的定性分析证实,许多参与者既信任简单的可视化,也信任有大量预测的可视化。这项工作为新冠病毒预测可视化如何影响信任提供了实用指南,包括识别预测在信任和基于任务的表现之间平衡权衡的范围的建议。

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