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Verifying RDF Triples Using LLMs with Traceable Arguments: A Method for Large-Scale Knowledge Graph Validation

3 Mins read

In recent research, a state-of-the-art technique has been introduced for utilizing Large Language Models (LLMs) to verify RDF (Resource Description Framework) triples, emphasizing the significance of providing traceable and verifiable reasoning. The fundamental building blocks of knowledge graphs (KGs) are RDF triples, which are composed of subject-predicate-object statements that describe relationships or facts. Maintaining the correctness of these claims is essential to upholding KGs’ dependability, particularly as their application grows across a range of industries, including the biosciences.

The intrinsic limitation of existing LLMs, which is their incapacity to accurately pinpoint the source of the data they utilize to create responses, is one of the main issues this approach attempts to solve. Even though LLMs are strong tools that can produce language that is human-like based on enormous volumes of pre-trained data, they frequently have trouble tracing the precise sources of the content they produce or offering accurate citations. Issues concerning the veracity of the data supplied by LLMs are raised by this lack of traceability, especially in situations when precision is crucial.

The suggested approach purposefully avoids depending on the LLM’s internal factual knowledge in order to get around this problem. Rather, it adopts a more stringent method by comparing pertinent sections of external texts with the RDF triples that require verification. These papers are obtained via web searches or from Wikipedia, guaranteeing that the process of verification is based on materials that can be directly cited and tracked back to their original sources.

The team has shared that the approach underwent extensive testing in the biosciences, an area renowned for its intricate and highly specialized subject matter. The researchers assessed the method’s effectiveness using a set of biomedical research statements known as the BioRED dataset. In order to account for potential false positives, they evaluated 1,719 positive RDF statements from the dataset in addition to an equivalent number of freshly created negative assertions. Although the results showed certain limits, they were encouraging. With an accuracy of 88%, the approach correctly identified statements 88% of the time when they were labeled as true. However, with a recall rate of 44%, it only recognized 44% of all true propositions, leaving out a sizable number of them.

These findings imply that although the technique is very accurate in the assertions it does validate, further work may be necessary to increase its capacity to detect all true statements. The comparatively low recall suggests that human supervision is still required to guarantee the accuracy of the verification procedure. This emphasizes how crucial it is to combine human expertise with automated technologies like LLMs in order to get the best results.

The team has also shared how this strategy can be utilized in practice on one of the biggest and most popular knowledge graphs, Wikidata. The researchers automatically retrieved the RDF triples that needed to be verified from Wikidata using a SPARQL query. They verified the statements against outside papers by using the suggested method on these triples, highlighting the method’s potential for widespread use.

In conclusion, this study’s findings point to the potential importance of LLMs in the historically difficult work of large-scale statement verification in knowledge graphs due to the high expense of human annotation. This approach provides a scalable means of preserving the precision and dependability of KGs by automating the verification process and anchoring it in verifiable external sources. Human supervision is still necessary, especially in situations when the LLM’s recollection is poor. In light of this, this method is a positive advancement in leveraging LLMs’ potential for traceable knowledge verification.


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Tanya Malhotra is a final year undergrad from the University of Petroleum & Energy Studies, Dehradun, pursuing BTech in Computer Science Engineering with a specialization in Artificial Intelligence and Machine Learning.
She is a Data Science enthusiast with good analytical and critical thinking, along with an ardent interest in acquiring new skills, leading groups, and managing work in an organized manner.



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