SlideAgent: Hierarchical Agentic Framework for Multi-Page Visual Document Understanding

Sep 26, 2025ยท
Yiqiao Jin
Yiqiao Jin
ยท 1 min read
SlideAgent framework
Date
Sep 26, 2025 —
Event
Location

Atlanta, GA, USA

756 W Peachtree St NW, Atlanta, GA 30309

Abstract

Multi-page visual documents such as manuals, brochures, presentations, and posters convey key information through layout, colors, icons, and cross-slide references. While large language models (LLMs) offer opportunities in document understanding, current systems struggle with complex, multi-page visual documents, particularly in fine-grained reasoning over elements and pages. We introduce SlideAgent, a versatile agentic framework for understanding multi-modal, multi-page, and multi-layout documents, especially slide decks. SlideAgent employs specialized agents and decomposes reasoning into three specialized levels–global, page, and element–to construct a structured, query-agnostic representation that captures both overarching themes and detailed visual or textual cues. During inference, SlideAgent selectively activates specialized agents for multi-level reasoning and integrates their outputs into coherent, context-aware answers. Extensive experiments show that SlideAgent achieves significant improvement over both proprietary (+7.9 over GPT-4o) and open-source models (+9.8 over InternVL3-8B).

Yiqiao Jin
Authors
CS PhD Student
My research interests include large language models (LLMs), multi-agent systems (MASs), and multimodal models.