A Grammar-Based Approach for Applying Visualization Taxonomies to Interaction Logs
Sneha Gathani, Shayan Monadjemi, Alvitta Ottley, Leilani Battle

TL;DR
This paper introduces a formal grammar-based method to systematically apply visualization taxonomies to user interaction logs, enabling better analysis of user behaviors and workflows.
Contribution
It reformulates visualization taxonomies as regular grammars to analyze interaction logs, bridging the gap between theoretical taxonomies and practical log data analysis.
Findings
Low-level taxonomies show mixed results across datasets.
High-level taxonomies have limited expressiveness.
Inconsistencies in log data affect taxonomy application.
Abstract
Researchers collect large amounts of user interaction data with the goal of mapping user's workflows and behaviors to their higher-level motivations, intuitions, and goals. Although the visual analytics community has proposed numerous taxonomies to facilitate this mapping process, no formal methods exist for systematically applying these existing theories to user interaction logs. This paper seeks to bridge the gap between visualization task taxonomies and interaction log data by making the taxonomies more actionable for interaction log analysis. To achieve this, we leverage structural parallels between how people express themselves through interactions and language by reformulating existing theories as regular grammars. We represent interactions as terminals within a regular grammar, similar to the role of individual words in a language, and patterns of interactions or non-terminals as…
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