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      E-ffective: A Visual Analytic System for Exploring the Emotion and Effectiveness of Inspirational Speeches

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          Abstract

          What makes speeches effective has long been a subject for debate, and until today there is broad controversy among public speaking experts about what factors make a speech effective as well as the roles of these factors in speeches. Moreover, there is a lack of quantitative analysis methods to help understand effective speaking strategies. In this paper, we propose E-ffective, a visual analytic system allowing speaking experts and novices to analyze both the role of speech factors and their contribution in effective speeches. From interviews with domain experts and investigating existing literature, we identified important factors to consider in inspirational speeches. We obtained the generated factors from multi-modal data that were then related to effectiveness data. Our system supports rapid understanding of critical factors in inspirational speeches, including the influence of emotions by means of novel visualization methods and interaction. Two novel visualizations include E-spiral (that shows the emotional shifts in speeches in a visually compact way) and E-script (that connects speech content with key speech delivery information). In our evaluation we studied the influence of our system on experts' domain knowledge about speech factors. We further studied the usability of the system by speaking novices and experts on assisting analysis of inspirational speech effectiveness.

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          Author and article information

          Journal
          28 October 2021
          Article
          10.1109/TVCG.2021.3114789
          2110.14908
          43e23a9e-432a-4ad8-80e7-63d1808cdd51

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          IEEE Transactions of Visualization and Computer Graphics (TVCG, Proc. VIS 2021), to appear
          cs.HC cs.CV cs.MM

          Computer vision & Pattern recognition,Graphics & Multimedia design,Human-computer-interaction

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