How Do We Measure Trust in Visual Data Communication?
September 28, 2022 Β· Declared Dead Β· π Workshop on Beyond Time and Errors: Novel Evaluation Methods for Visualization
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Authors
Hamza Elhamdadi, Aimen Gaba, Yea-Seul Kim, Cindy Xiong
arXiv ID
2209.14276
Category
cs.HC: Human-Computer Interaction
Citations
26
Venue
Workshop on Beyond Time and Errors: Novel Evaluation Methods for Visualization
Last Checked
4 months ago
Abstract
Trust is fundamental to effective visual data communication between the visualization designer and the reader. Although personal experience and preference influence readers' trust in visualizations, visualization designers can leverage design techniques to create visualizations that evoke a "calibrated trust," at which readers arrive after critically evaluating the information presented. To systematically understand what drives readers to engage in "calibrated trust," we must first equip ourselves with reliable and valid methods for measuring trust. Computer science and data visualization researchers have not yet reached a consensus on a trust definition or metric, which are essential to building a comprehensive trust model in human-data interaction. On the other hand, social scientists and behavioral economists have developed and perfected metrics that can measure generalized and interpersonal trust, which the visualization community can reference, modify, and adapt for our needs. In this paper, we gather existing methods for evaluating trust from other disciplines and discuss how we might use them to measure, define, and model trust in data visualization research. Specifically, we discuss quantitative surveys from social sciences, trust games from behavioral economics, measuring trust through measuring belief updating, and measuring trust through perceptual methods. We assess the potential issues with these methods and consider how we can systematically apply them to visualization research.
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