DataTales: Investigating the use of Large Language Models for Authoring Data-Driven Articles
Short Paper Proceedings of IEEE Visualization and Visual Analytics (VIS, Melbourne, Oct 22, 2023 – Fri, Oct 27, 2023)
Authoring data-driven articles is a complex process requiring authors to not only analyze data for insights but also craft a cohesive narrative that effectively communicates the insights. Text generation capabilities of contemporary large language models (LLMs) present an opportunity to assist the authoring of data-driven articles and expedite the writing process. In this work, we investigate the feasibility and perceived value of leveraging LLMs to support authors of data-driven articles. We designed a prototype system, DataTales, that leverages a LLM to generate textual narratives accompanying a given chart. Using DataTales as a design probe, we conducted a qualitative study with 11 professionals to evaluate the concept, from which we distilled affordances and opportunities to further integrate LLMs as valuable data-driven article authoring assistants.
Tableau-Autor(en)
Nicole Sultanum, Arjun Srinivasan
Autor(en)