Evaluating Named Entity Recognition Using Few-Shot Prompting with Large Language Models
Hédi Zeghidi  1@  , Ludovic Moncla  2@  
1 : Laboratoire d'InfoRmatique en Image et Systèmes d'information
CNRS
2 : Laboratoire d'InfoRmatique en Image et Systèmes d'information  (LIRIS)
Institut National des Sciences Appliquées (INSA) - Lyon
Bâtiment Blaise Pascal - 20, avenue Albert Einstein - 69621 Villeurbanne cedex -  France

This paper evaluates Few-Shot Prompting with Large Language Models for Named Entity Recognition (NER). Traditional NER systems rely on extensive labeled datasets, which are costly and time-consuming to obtain. Few-Shot Prompting or in-context learning enables models to recognize entities with minimal examples. We assess state-of-the-art models like GPT-4 in NER tasks, comparing their few-shot performance to fully supervised benchmarks. Results show that while there is a performance gap, large models excel in adapting to new entity types and domains with very limited data. We also explore the effects of prompt engineering, guided output format and context length on performance. This study underscores Few-Shot Learning's potential to reduce the need for large labeled datasets, enhancing NER scalability and accessibility.


Personnes connectées : 1 Vie privée
Chargement...