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Roberta Large Bne Capitel Ner

Developed by PlanTL-GOB-ES
This model is a Spanish named entity recognition model based on the RoBERTa architecture, pre-trained on the large-scale BNE corpus and fine-tuned using the CAPITEL-NERC dataset
Downloads 370
Release Time : 3/2/2022

Model Overview

Used for named entity recognition tasks in Spanish text, capable of identifying entities such as person names and place names

Model Features

Large-scale pre-training
Pre-trained on 570GB of cleaned web-crawled data from the Spanish National Library (BNE)
Domain optimization
Fine-tuned specifically for named entity recognition using the CAPITEL competition dataset
High performance
Achieves an F1 score of 90.51 on the CAPITEL-NERC test set, outperforming other Spanish language models

Model Capabilities

Spanish text processing
Named entity recognition
Person name recognition
Place name recognition
Organization name recognition

Use Cases

Information extraction
User information extraction
Extract entity information such as names and addresses from user input text
Example input 'My name is Francisco Javier, I live in Madrid' can accurately identify person and place names
Document analysis
Institutional document processing
Automatically process Spanish documents containing organization names and person names
Can identify workplace information such as 'BSC'
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