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Main Authors: Mahbub, Ridwan, Aziz, Syem, Ahmed, Mahir, Rahman, Shadikur, Rahman, Mizanur, Joty, Shafiq, Hoque, Enamul
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.25220
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author Mahbub, Ridwan
Aziz, Syem
Ahmed, Mahir
Rahman, Shadikur
Rahman, Mizanur
Joty, Shafiq
Hoque, Enamul
author_facet Mahbub, Ridwan
Aziz, Syem
Ahmed, Mahir
Rahman, Shadikur
Rahman, Mizanur
Joty, Shafiq
Hoque, Enamul
contents Data videos are a powerful medium for visual data based storytelling, combining animated, chart-centric visualizations with synchronized narration. Widely used in journalism, education, and public communication, they help audiences understand complex data through clear and engaging visual explanations. Despite their growing impact, generating data-driven video stories remains challenging, as it requires careful coordination of visual encoding, temporal progression, and narration and substantial expertise in visualization design, animation, and video-editing tools. Recent advances in large language models offer new opportunities to automate this process; however, there is currently no benchmark for rigorously evaluating models on animated visualization-based video storytelling. To address this gap, we introduce DataReel, a benchmark for automated data-driven video story generation comprising 328 real-world stories. Each story pairs structured data, a chart visualization, and a narration transcript, enabling systematic evaluation of models' abilities to generate animated data video stories. We further propose a multi-agent framework that decomposes the task into planning, generation, and verification stages, mirroring key aspects of the human storytelling process. Experiments show that this multi-agent approach outperforms direct prompting baselines under both automatic and human evaluations, while revealing persistent challenges in coordinating animation, narration, and visual emphasis. We release DataReel at https://github.com/vis-nlp/DataReel.
format Preprint
id arxiv_https___arxiv_org_abs_2604_25220
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DATAREEL: Automated Data-Driven Video Story Generation with Animations
Mahbub, Ridwan
Aziz, Syem
Ahmed, Mahir
Rahman, Shadikur
Rahman, Mizanur
Joty, Shafiq
Hoque, Enamul
Artificial Intelligence
Data videos are a powerful medium for visual data based storytelling, combining animated, chart-centric visualizations with synchronized narration. Widely used in journalism, education, and public communication, they help audiences understand complex data through clear and engaging visual explanations. Despite their growing impact, generating data-driven video stories remains challenging, as it requires careful coordination of visual encoding, temporal progression, and narration and substantial expertise in visualization design, animation, and video-editing tools. Recent advances in large language models offer new opportunities to automate this process; however, there is currently no benchmark for rigorously evaluating models on animated visualization-based video storytelling. To address this gap, we introduce DataReel, a benchmark for automated data-driven video story generation comprising 328 real-world stories. Each story pairs structured data, a chart visualization, and a narration transcript, enabling systematic evaluation of models' abilities to generate animated data video stories. We further propose a multi-agent framework that decomposes the task into planning, generation, and verification stages, mirroring key aspects of the human storytelling process. Experiments show that this multi-agent approach outperforms direct prompting baselines under both automatic and human evaluations, while revealing persistent challenges in coordinating animation, narration, and visual emphasis. We release DataReel at https://github.com/vis-nlp/DataReel.
title DATAREEL: Automated Data-Driven Video Story Generation with Animations
topic Artificial Intelligence
url https://arxiv.org/abs/2604.25220