Graph Repairs with Large Language Models: An Empirical Study
Journal:
arXiv
Published Date:
Jul 4, 2025
Abstract
Property graphs are widely used in domains such as healthcare, finance, and
social networks, but they often contain errors due to inconsistencies, missing
data, or schema violations. Traditional rule-based and heuristic-driven graph
repair methods are limited in their adaptability as they need to be tailored
for each dataset. On the other hand, interactive human-in-the-loop approaches
may become infeasible when dealing with large graphs, as the cost--both in
terms of time and effort--of involving users becomes too high. Recent
advancements in Large Language Models (LLMs) present new opportunities for
automated graph repair by leveraging contextual reasoning and their access to
real-world knowledge. We evaluate the effectiveness of six open-source LLMs in
repairing property graphs. We assess repair quality, computational cost, and
model-specific performance. Our experiments show that LLMs have the potential
to detect and correct errors, with varying degrees of accuracy and efficiency.
We discuss the strengths, limitations, and challenges of LLM-driven graph
repair and outline future research directions for improving scalability and
interpretability.