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Auteurs principaux: Castedo, Carla, Iglesias, Enrique, Lama, Manuel, Bugarin-Diz, Alberto, Vidal, Maria-Esther, Chaves-Fraga, David
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.19518
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author Castedo, Carla
Iglesias, Enrique
Lama, Manuel
Bugarin-Diz, Alberto
Vidal, Maria-Esther
Chaves-Fraga, David
author_facet Castedo, Carla
Iglesias, Enrique
Lama, Manuel
Bugarin-Diz, Alberto
Vidal, Maria-Esther
Chaves-Fraga, David
contents Generating Knowledge Graphs (KGs) remains one of the most time-consuming and labor-intensive tasks for knowledge engineers, as they need to identify semantic equivalences between input data sources and ontology terms. While declarative solutions (e.g., RML, SPARQL-Anything) have helped to generalize this process, aligning input schema elements with ontology terms still involves intricate transformations and requires considerable manual effort. With the advent of Large Language Models (LLMs), there is growing interest in leveraging their capabilities to assist KG engineers. Although some studies have explored using LLMs to automate KG construction, there is still no standardized framework for assessing how effectively they establish correspondences between data schemes and ontology concepts. Therefore, in this paper, we propose BLINKG, a benchmark designed to evaluate the mapping capabilities of LLMs in constructing KGs from heterogeneous data sources. The benchmark includes a set of scenarios with increasing complexity, based on real-world use cases. We conduct an extensive experimental evaluation of several stateof-the-art LLMs using BLINK and observe that they already offer promising solutions. However, their performance remains limited in complex scenarios. Thanks to this benchmark, we can already assess the current capabilities of LLMs for KG construction. Additionally, we define a set of requirements for achieving (semi)automated (LLM-driven) KG construction, opening new research lines in this area.
format Preprint
id arxiv_https___arxiv_org_abs_2605_19518
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle BLINKG: A Benchmark for LLM-Integrated Knowledge Graph Generation
Castedo, Carla
Iglesias, Enrique
Lama, Manuel
Bugarin-Diz, Alberto
Vidal, Maria-Esther
Chaves-Fraga, David
Artificial Intelligence
Generating Knowledge Graphs (KGs) remains one of the most time-consuming and labor-intensive tasks for knowledge engineers, as they need to identify semantic equivalences between input data sources and ontology terms. While declarative solutions (e.g., RML, SPARQL-Anything) have helped to generalize this process, aligning input schema elements with ontology terms still involves intricate transformations and requires considerable manual effort. With the advent of Large Language Models (LLMs), there is growing interest in leveraging their capabilities to assist KG engineers. Although some studies have explored using LLMs to automate KG construction, there is still no standardized framework for assessing how effectively they establish correspondences between data schemes and ontology concepts. Therefore, in this paper, we propose BLINKG, a benchmark designed to evaluate the mapping capabilities of LLMs in constructing KGs from heterogeneous data sources. The benchmark includes a set of scenarios with increasing complexity, based on real-world use cases. We conduct an extensive experimental evaluation of several stateof-the-art LLMs using BLINK and observe that they already offer promising solutions. However, their performance remains limited in complex scenarios. Thanks to this benchmark, we can already assess the current capabilities of LLMs for KG construction. Additionally, we define a set of requirements for achieving (semi)automated (LLM-driven) KG construction, opening new research lines in this area.
title BLINKG: A Benchmark for LLM-Integrated Knowledge Graph Generation
topic Artificial Intelligence
url https://arxiv.org/abs/2605.19518