Renzo Alva Principe


2025

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Enhancing Information Extraction with Large Language Models: A Comparison with Human Annotation and Rule-Based Methods in a Real Estate Case Study
Renzo Alva Principe | Marco Viviani | Nicola Chiarini
Proceedings of the 5th Conference on Language, Data and Knowledge

52 Information Extraction (IE) is a key task in Natural Language Processing (NLP) that transforms unstructured text into structured data. This study compares human annotation, rule-based systems, and Large Language Models (LLMs) for domain-specific IE, focusing on real estate auction documents. We assess each method in terms of accuracy, scalability, and cost-efficiency, highlighting the associated trade-offs. Our findings provide valuable insights into the effectiveness of using LLMs for the considered task and, more broadly, offer guidance on how organizations can balance automation, maintainability, and performance when selecting the most suitable IE solution.

2023

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Profiling Linguistic Knowledge Graphs
Blerina Spahiu | Renzo Alva Principe | Andrea Maurino
Proceedings of the 4th Conference on Language, Data and Knowledge