InReAcTable: LLM-Powered Interactive Visual Data Story Construction from Tabular Data
Gerile Aodeng, Guozheng Li, Yunshan Feng, Qiyang Chen, Yu Zhang, Chi Harold Liu

TL;DR
InReAcTable is a framework that leverages large language models and insight graphs to assist users in constructing visual data stories from tabular data, improving efficiency and alignment with analytical goals.
Contribution
The paper introduces InReAcTable, a novel interactive framework combining structural and semantic filtering for visual data story construction using LLMs.
Findings
Effective guidance in story construction demonstrated through case study.
User experiment shows improved efficiency and story relevance.
Framework successfully aligns stories with user analytical goals.
Abstract
Insights in tabular data capture valuable patterns that help analysts understand critical information. Organizing related insights into visual data stories is crucial for in-depth analysis. However, constructing such stories is challenging because of the complexity of the inherent relations between extracted insights. Users face difficulty sifting through a vast number of discrete insights to integrate specific ones into a unified narrative that meets their analytical goals. Existing methods either heavily rely on user expertise, making the process inefficient, or employ automated approaches that cannot fully capture their evolving goals. In this paper, we introduce InReAcTable, a framework that enhances visual data story construction by establishing both structural and semantic connections between data insights. Each user interaction triggers the Acting module, which utilizes an…
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