ArXiv TLDR

GraphTide: Augmenting Knowledge-Intensive Text with Progressive Nested Graph

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2604.12624

Xin Qian, Dazhen Deng, Zhaoping He, Xingbo Wang, Yuchen He + 1 more

cs.HC

TLDR

GraphTide uses animated nested graphs to help users better understand complex, knowledge-rich texts.

Key contributions

  • Introduces progressive nested entity-relationship graphs with animation for complex texts.
  • Develops on-demand decomposition pipeline capturing intra- and inter-sentence relationships.
  • Proposes structure-aware force-directed layout for clearer graph visualization.
  • User study shows improved comprehension over static and traditional graph methods.

Why it matters

Understanding dense, knowledge-rich texts is challenging due to complex entity relations. GraphTide's animated nested graphs reduce cognitive load and enhance comprehension, aiding readers in tracking intricate information effectively.

Original Abstract

Knowledge-intensive text usually contains fruitful entities and complex relationships, such as academic articles and scientific exposition. Reading and comprehending such texts often demands considerable time and mental effort to track the relationships between entities. To reduce the burden, we present GraphTide, a visualization technique that progressively constructs nested entity-relationship graphs with animation to support the understanding of complex text. Our method features an on-demand entity-relationship decomposition pipeline that constructs nested graphs to represent intra- and inter-sentence relationships. Moreover, we propose a structure-aware force-directed layout optimization algorithm to enhance structural clarity. Sentences and their associated entities are incrementally revealed through animated transitions, helping users maintain context as the narrative unfolds. A user study shows that GraphTide significantly improves users' comprehension of knowledge-intensive texts compared to traditional graph-based techniques and static nested graph representations.

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