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Dziban: Balancing Agency & Automation in Visualization Design via Anchored Recommendations

Halden Lin, Dominik Moritz, Jeffrey Heer

202050 citationsDOI

Abstract

Visualization recommender systems attempt to automate design decisions spanning choices of selected data, transformations, and visual encodings. However, across invocations such recommenders may lack the context of prior results, producing unstable outputs that override earlier design choices. To better balance automated suggestions with user intent, we contribute Dziban, a visualization API that supports both ambiguous specification and a novel anchoring mechanism for conveying desired context. Dziban uses the Draco knowledge base to automatically complete partial specifications and suggest appropriate visualizations. In addition, it extends Draco with chart similarity logic, enabling recommendations that also remain perceptually similar to a provided "anchor" chart. Existing APIs for exploratory visualization, such as ggplot2 and Vega-Lite, require fully specified chart definitions. In contrast, Dziban provides a more concise and flexible authoring experience through automated design, while preserving predictability and control through anchored recommendations.

Topics & Concepts

Computer scienceVisualizationContext (archaeology)ChartHuman–computer interactionData visualizationSoftware engineeringAutomationInformation retrievalData miningBiologyMechanical engineeringPaleontologyEngineeringMathematicsStatisticsData Visualization and AnalyticsAdvanced Text Analysis TechniquesData Management and Algorithms
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