TL;DR
This paper introduces a Bayesian model selection approach to infer user exploration strategies and information relevance in visualization systems, enabling better understanding of user goals through interaction data.
Contribution
The paper proposes a novel Bayesian framework that models user exploration as competing probabilistic models, providing a general method for inferring user goals from interaction data.
Findings
Outperforms baseline methods in bias detection.
Accurately predicts future user interactions.
Effectively summarizes user exploration sessions.
Abstract
Analyzing interaction data provides an opportunity to learn about users, uncover their underlying goals, and create intelligent visualization systems. The first step for intelligent response in visualizations is to enable computers to infer user goals and strategies through observing their interactions with a system. Researchers have proposed multiple techniques to model users, however, their frameworks often depend on the visualization design, interaction space, and dataset. Due to these dependencies, many techniques do not provide a general algorithmic solution to user exploration modeling. In this paper, we construct a series of models based on the dataset and pose user exploration modeling as a Bayesian model selection problem where we maintain a belief over numerous competing models that could explain user interactions. Each of these competing models represent an exploration…
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