Environmental sensors provide crucial data for understanding our surroundings. For example, air quality maps based on sensor readings help users make decisions to mitigate the effects of pollution on their health. Standard maps show readings from individual sensors or colored contours indicating estimated pollution levels. However, showing a single estimate may conceal uncertainty and lead to underestimation of risk, while showing sensor data yields varied interpretations. We present several visualizations of uncertainty in air quality maps, including a frequency-framing "dotmap" and small multiples, and we compare them with standard contour and sensor-based maps. In a user study, we find that including uncertainty in maps has a significant effect on how much users would choose to reduce physical activity, and that people make more cautious decisions when using uncertainty-aware maps. Additionally, we analyze think-aloud transcriptions from the experiment to understand more about how the representation of uncertainty influences people's decision-making. Our results suggest ways to design maps of sensor data that can encourage certain types of reasoning, yield more consistent responses, and convey risk better than standard maps.
翻译:环境传感器提供了了解周围环境的关键数据。例如,基于传感器读数的空气质量地图有助于用户决定减轻污染对其健康的影响。标准地图显示单个传感器或彩色轮廓的读数,表明估计的污染程度。不过,显示单一估计可能掩盖不确定性,导致低估风险,同时显示传感器数据产生不同的解释。我们展示了空气质量地图中不确定性的几种可视化,包括频谱“多图”和小数,我们将其与标准的等距和传感器地图进行比较。在一项用户研究中,我们发现,在地图中包括不确定性对用户选择减少实际活动的程度有重大影响,人们在使用不确定性地图时作出更加谨慎的决定。此外,我们分析实验中的思维-单词抄录,以更多地了解不确定性代表如何影响人们的决策。我们的结果表明,如何设计能够鼓励某些类型的推理、产生更一致的反应和传送比标准地图更好的风险的传感器数据地图。