我安全吗?初步研究日常人们如何解读covid数据可视化

Bernice Rogowitz, Paul Borrel
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摘要

在过去几年中,几个知名组织收集了国际COVID数据并向国际社会提供。这导致了不同可视化的源泉。可以选择许多不同的措施(例如,病例、死亡、住院)。对于每一项测量,设计者和政策制定者可以对如何表示数据做出无数不同的选择。来自个别国家的数据可以以线性或对数比例尺、每日、每周或累积、单独或在其他国家的背景下、按比例缩放到共同网格或按比例缩放到自己的范围、原始或人均等。众所周知,数据表示会影响数据的解释。但是,这些不同表征中的哪些视觉特征会影响我们的判断呢?为了探索这个想法,我们进行了一个实验,我们要求参与者查看时间序列数据图,并评估如果他们去其中一个所代表的国家旅行,他们会有多安全,以及他们对自己的判断有多自信。观察者对相同数据的48种可视化方式进行了评级,这些可视化方式在6个受控维度上呈现出不同的效果。我们的初步结果为视觉表征的特征如何影响人类对时间序列数据的判断提供了见解。我们还讨论了这些结果如何影响公共政策和新闻机构如何选择向公众展示数据。
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Am I safe? A preliminary examination of how everyday people interpret covid data visualizations
During these past years, international COVID data have been collected by several reputable organizations and made available to the worldwide community. This has resulted in a wellspring of different visualizations. Many different measures can be selected (e.g., cases, deaths, hospitalizations). And for each measure, designers and policy makers can make a myriad of different choices of how to represent the data. Data from individual countries may be presented on linear or log scales, daily, weekly, or cumulative, alone or in the context of other countries, scaled to a common grid, or scaled to their own range, raw or per capita, etc. It is well known that the data representation can influence the interpretation of data. But, what visual features in these different representations affect our judgments? To explore this idea, we conducted an experiment where we asked participants to look at time-series data plots and assess how safe they would feel if they were traveling to one of the countries represented, and how confident they are of their judgment. Observers rated 48 visualizations of the same data, rendered differently along 6 controlled dimensions. Our initial results provide insight into how characteristics of the visual representation affect human judgments of time series data. We also discuss how these results could impact how public policy and news organizations choose to represent data to the public.
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