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arxiv:2604.11969

Narrative-Driven Paper-to-Slide Generation via ArcDeck

Published on Apr 13
· Submitted by
Junho Kim
on Apr 16
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Abstract

ArcDeck is a multi-agent framework that enhances paper-to-slide generation by modeling logical flow through discourse trees and iterative agent refinement, outperforming direct summarization methods.

AI-generated summary

We introduce ArcDeck, a multi-agent framework that formulates paper-to-slide generation as a structured narrative reconstruction task. Unlike existing methods that directly summarize raw text into slides, ArcDeck explicitly models the source paper's logical flow. It first parses the input to construct a discourse tree and establish a global commitment document, ensuring the high-level intent is preserved. These structural priors then guide an iterative multi-agent refinement process, where specialized agents iteratively critique and revise the presentation outline before rendering the final visual layouts and designs. To evaluate our approach, we also introduce ArcBench, a newly curated benchmark of academic paper-slide pairs. Experimental results demonstrate that explicit discourse modeling, combined with role-specific agent coordination, significantly improves the narrative flow and logical coherence of the generated presentations.

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Paper submitter

ArcDeck is an end-to-end slide generation framework that converts academic PDF papers into polished .pptx presentation slides. ArcDeck frames slide generation around the paper’s narrative structure instead of simple summarization. By combining narrative-driven outline generation with visually strong slide rendering, ArcDeck produces polished and engaging slide decks.

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