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Bert Portuguese Ner

Developed by lfcc
BERT-based Portuguese named entity recognition model, specifically fine-tuned for archival documents
Downloads 2,229
Release Time : 3/2/2022

Model Overview

This model is a fine-tuned version of neuralmind/bert-base-portuguese-cased, specifically designed for named entity recognition tasks in Portuguese archival documents. It can identify entity categories such as dates, occupations, persons, locations, and organizations.

Model Features

High Accuracy
Achieves 97% accuracy and 93.12% F1 score on the evaluation set
Domain-specific Optimization
Specially fine-tuned for Portuguese archival documents, suitable for processing historical documents
Multi-category Recognition
Capable of identifying various entity types such as dates, occupations, persons, locations, and organizations

Model Capabilities

Portuguese text processing
Named entity recognition
Archival document analysis

Use Cases

Archive Digitization
Automatic Annotation of Historical Archives
Automatically identify information about persons, locations, and organizations in historical archives
Improves archive retrieval efficiency and supports the development of intelligent browsing tools
Academic Research
Historical Document Analysis
Extract key entity information from Portuguese historical documents
Assists historians in document research and analysis
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