Towards Modeling Visualization Processes as Dynamic Bayesian Networks
Christian Heine
External link (DOI)
View presentation:2020-10-30T14:30:00ZGMT-0600Change your timezone on the schedule page
2020-10-30T14:30:00Z

Keywords
Visualization, model building, perception, cognition, dynamic Bayesian networks
Abstract
Visualization designs typically need to be evaluated with user studies because their suitability for a particular task is hard to predict. What the field of visualization is currently lacking are theories and models that can be used to explain why certain designs work and others do not. This paper outlines a general framework for modeling visualization processes that can be the first step towards such a theory. It surveys related research in mathematical and computational psychology and argues for the use of dynamic Bayesian networks to describe these time-dependent, probabilistic processes. It is discussed how these models could be used to aid in design evaluation. The development of concrete models will be a long process. Thus, the paper outlines a research program sketching how to develop prototypes and their extensions from existing models and empirical and observational studies.