How Personality and Visual Channels Affect Insight Generation

Tomás Alves, Carlota Dias, Daniel Gonçalves, Joana Henriques-Calado, Sandra Gama

View presentation:2022-10-17T16:30:00ZGMT-0600Change your timezone on the schedule page
2022-10-17T16:30:00Z
Exemplar figure, described by caption below
Graphical abstract of the paper. We study how the insight categorization model and personality traits create obstacles in insight-based evaluations.

The live footage of the talk, including the Q&A, can be viewed on the session page, BELIV: Paper Session 1.

Abstract

Gaining insight is considered one of the relevant purposes of visual data exploration, yet studies that categorize insights are rare. This paper reports on a study to understand if the categorization model used to describe insights and personality factors affect insight-based evaluations' findings. Participants completed a set of tasks with three hierarchical visualizations and then reported what insights they could gather from them. Results show that the insight categorization taxonomies produce different descriptions of insights based on the same corpus of responses. In addition, our findings suggest that the openness to experience trait positively influences the number of reported insights. Both these factors may create obstacles to the design of insight-based evaluations and, consequently, should be controlled in the experimental design. We discuss the study implications, lessons learned, and future work opportunities.