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Distributed and Self-organizing Systems
Deep Semantic Linking of Scientific Knowledge: An Agentic AI Framework for Knowledge Graph Construction
Deep Semantic Linking of Scientific Knowledge: An Agentic AI Framework for Knowledge Graph Construction | Distributed and Self-organizing Systems
 

PUBLICATION

Deep Semantic Linking of Scientific Knowledge: An Agentic AI Framework for Knowledge Graph Construction

Type

Conference Paper

Year

2026

Authors

Research Area

Web Engineering

Event

26th International Conference of Web Engineering

Published in

Lecture Notes in Computer Science Vol. 16625

ISBN/ISSN

978-3-032-29371-8

Download

DOI
PDF

Abstract

The foundation of scientific research is the comprehensive analysis of existing literature. However, the exponential growth of published research leaves scientists increasingly overwhelmed, making it difficult to maintain a complete overview of the state-of-the-art or to discover hidden synergies between studies. The root of this problem lies in the traditional format of scholarly communication: crucial knowledge about applied methods, datasets, and metrics remains locked in semantically unlinked documents. While this format is optimal for human reading, it is highly inefficient for machine processing. Even modern AI research assistants frequently fail to provide complete, verifiable, and hallucination-free answers to complex research queries. To enable true machine-assisted exploration and verification, scholarly literature must be transformed from isolated documents into deeply interlinked, machine-readable structures. To achieve this, we introduce an agentic AI framework that automatically extracts key research entities, seamlessly interlinking the literature by mapping them to standard knowledge bases via unified URIs.

Reference

Schaftner, Sandra; Gaedke, Martin: Deep Semantic Linking of Scientific Knowledge: An Agentic AI Framework for Knowledge Graph Construction. Lecture Notes in Computer Science Vol. 16625, pp. tba, 2026.

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