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Towards Structured Knowledge: Advancing Triple Extraction from Regional Trade Agreements using Large Language Models

Published 29 Sep 2025 in cs.CL, cs.CE, cs.IR, and cs.LG | (2510.05121v1)

Abstract: This study investigates the effectiveness of LLMs for the extraction of structured knowledge in the form of Subject-Predicate-Object triples. We apply the setup for the domain of Economics application. The findings can be applied to a wide range of scenarios, including the creation of economic trade knowledge graphs from natural language legal trade agreement texts. As a use case, we apply the model to regional trade agreement texts to extract trade-related information triples. In particular, we explore the zero-shot, one-shot and few-shot prompting techniques, incorporating positive and negative examples, and evaluate their performance based on quantitative and qualitative metrics. Specifically, we used Llama 3.1 model to process the unstructured regional trade agreement texts and extract triples. We discuss key insights, challenges, and potential future directions, emphasizing the significance of LLMs in economic applications.

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