1. GistVis: Automatic Generation of Word-scale Visualizations from Data-rich Documents
- Author
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Zou, Ruishi, Tang, Yinqi, Chen, Jingzhu, Lu, Siyu, Lu, Yan, Yang, Yingfan, and Ye, Chen
- Subjects
Computer Science - Human-Computer Interaction - Abstract
Data-rich documents are ubiquitous in various applications, yet they often rely solely on textual descriptions to convey data insights. Prior research primarily focused on providing visualization-centric augmentation to data-rich documents. However, few have explored using automatically generated word-scale visualizations to enhance the document-centric reading process. As an exploratory step, we propose GistVis, an automatic pipeline that extracts and visualizes data insight from text descriptions. GistVis decomposes the generation process into four modules: Discoverer, Annotator, Extractor, and Visualizer, with the first three modules utilizing the capabilities of large language models and the fourth using visualization design knowledge. Technical evaluation including a comparative study on Discoverer and an ablation study on Annotator reveals decent performance of GistVis. Meanwhile, the user study (N=12) showed that GistVis could generate satisfactory word-scale visualizations, indicating its effectiveness in facilitating users' understanding of data-rich documents (+5.6% accuracy) while significantly reducing their mental demand (p=0.016) and perceived effort (p=0.033)., Comment: Conditionally accepted to CHI Conference on Human Factors in Computing Systems (CHI'25)
- Published
- 2025
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