Litcius/Paper detail

AutoTitle: An Interactive Title Generator for Visualizations

Can Liu, Yuhan Guo, Xiaoru Yuan

2023IEEE Transactions on Visualization and Computer Graphics15 citationsDOI

Abstract

We propose AutoTitle, an interactive visualization title generator satisfying multifarious user requirements. Factors making a good title, namely, the feature importance, coverage, preciseness, general information richness, conciseness, and non-technicality, are summarized based on the feedback from user interviews. Visualization authors need to trade off among these factors to fit specific scenarios, resulting in a wide design space of visualization titles. AutoTitle generates various titles through the process of visualization facts traversing, deep learning-based fact-to-title generation, and quantitative evaluation of the six factors. AutoTitle also provides users with an interactive interface to explore the desired titles by filtering the metrics. We conduct a user study to validate the quality of generated titles as well as the rationality and helpfulness of these metrics.

Topics & Concepts

Computer scienceVisualizationGenerator (circuit theory)HelpfulnessHuman–computer interactionData visualizationUser interfaceProcess (computing)Information visualizationInteractive visualizationInformation retrievalVisual analyticsMultimediaData miningProgramming languagePhysicsPsychologySocial psychologyPower (physics)Quantum mechanicsTopic ModelingData Visualization and AnalyticsVideo Analysis and Summarization