> Cleveland examined how accurately our visual system can process visual elements or “perceptual units” representing underlying data. These elements include markers aligned on the same scale (e.g., #DotPlots, #ScatterPlots, ordinary #BarCharts), the length of lines that are not aligned on the same scale (e.g., stacked bar plots), area (#PieCharts and mosaic plots), angles (also pie charts), shading/color, volume, curvature, and direction...
#WilliamCleveland #RobertMcGill
#robertmcgill #williamcleveland #piecharts #BarCharts #scatterplots #DotPlots
> Cleveland examined how accurately our visual system can process visual elements or “perceptual units” representing underlying data. These elements include markers aligned on the same scale (e.g., #DotPlots, #ScatterPlots, ordinary #BarCharts), the length of lines that are not aligned on the same scale (e.g., stacked bar plots), area (#PieCharts and mosaic plots), angles (also pie charts), shading/color, volume, curvature, and direction...
#WilliamCleveland #RobertMcGill
#robertmcgill #williamcleveland #piecharts #BarCharts #scatterplots #DotPlots
> The results are resoundingly clear—judgements about position relative to a baseline are dramatically more accurate than judgements about angles, area, or length (with no baseline). Hence.. [#Cleveland] suggests that we replace #PieCharts with #BarCharts or #DotPlots and that we substitute stacked bar charts for grouped bar charts.
#SolomonMessing on #EdwardTufte and #DataVisualization
#datavisualization #EdwardTufte #SolomonMessing #DotPlots #BarCharts #piecharts #cleveland