Stacked bar charts are a visualization method for presenting multiple attributes of data,and many visualization tools support these charts.To assess the efficacy of stacked bar charts in supporting attributecomparison...Stacked bar charts are a visualization method for presenting multiple attributes of data,and many visualization tools support these charts.To assess the efficacy of stacked bar charts in supporting attributecomparison tasks,we conducted a user study to compare three types of stacked bar charts:classical,inverting,and diverging.Each chart type was used to visualize six attributes of data where half of the attributes have the characteristics of‘lower better’whereas the other half attributes are with‘higher better.’Thirty participants were asked to perform two types of comparison tasks:single-attribute and overall-attribute comparisons.We measured the completion time,error rate,and perceived difficulty of the comparison tasks.The results of the study suggest that,for overall-attribute comparisons,the inverting stacked bar chart was the most effective with regards to the completion time.The results also show that performing overall-attribute comparisons using the classical and diverging stacked bar charts required more time than performing single-attribute comparisons using these charts.Participants perceived the inverting and diverging stacked bar charts as easier-to-use than the classical stacked bar chart for overall-attribute comparisons.However,for single-attribute comparisons,all chart types delivered similar performance.We discuss how these findings can inform the better design of interactive stacked bar charts and visualization tools.展开更多
基金Lee Howorko received funding from MacEwan University,Canada through the Undergraduate Student Research Initiative Grant.
文摘Stacked bar charts are a visualization method for presenting multiple attributes of data,and many visualization tools support these charts.To assess the efficacy of stacked bar charts in supporting attributecomparison tasks,we conducted a user study to compare three types of stacked bar charts:classical,inverting,and diverging.Each chart type was used to visualize six attributes of data where half of the attributes have the characteristics of‘lower better’whereas the other half attributes are with‘higher better.’Thirty participants were asked to perform two types of comparison tasks:single-attribute and overall-attribute comparisons.We measured the completion time,error rate,and perceived difficulty of the comparison tasks.The results of the study suggest that,for overall-attribute comparisons,the inverting stacked bar chart was the most effective with regards to the completion time.The results also show that performing overall-attribute comparisons using the classical and diverging stacked bar charts required more time than performing single-attribute comparisons using these charts.Participants perceived the inverting and diverging stacked bar charts as easier-to-use than the classical stacked bar chart for overall-attribute comparisons.However,for single-attribute comparisons,all chart types delivered similar performance.We discuss how these findings can inform the better design of interactive stacked bar charts and visualization tools.