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      Assessing the Effect of Visualizations on Bayesian Reasoning through Crowdsourcing.

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          Abstract

          People have difficulty understanding statistical information and are unaware of their wrong judgments, particularly in Bayesian reasoning. Psychology studies suggest that the way Bayesian problems are represented can impact comprehension, but few visual designs have been evaluated and only populations with a specific background have been involved. In this study, a textual and six visual representations for three classic problems were compared using a diverse subject pool through crowdsourcing. Visualizations included area-proportional Euler diagrams, glyph representations, and hybrid diagrams combining both. Our study failed to replicate previous findings in that subjects' accuracy was remarkably lower and visualizations exhibited no measurable benefit. A second experiment confirmed that simply adding a visualization to a textual Bayesian problem is of little help, even when the text refers to the visualization, but suggests that visualizations are more effective when the text is given without numerical values. We discuss our findings and the need for more such experiments to be carried out on heterogeneous populations of non-experts.

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          Author and article information

          Journal
          IEEE Trans Vis Comput Graph
          IEEE transactions on visualization and computer graphics
          Institute of Electrical and Electronics Engineers (IEEE)
          1941-0506
          1077-2626
          Dec 2012
          : 18
          : 12
          Affiliations
          [1 ] INRIA and School of Computing, University of Kent, UK. lm304@kent.ac.uk
          Article
          10.1109/TVCG.2012.199
          26357162
          b7159a44-df6f-43ae-b2ae-b46be4e37cc0
          History

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