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Das22 41 Camembert Pretrained Finetuned Ref

Developed by HueyNemud
This model is based on the CamemBERT architecture and fine-tuned for Named Entity Recognition (NER) tasks on 19th century French business directories, trained with 6,004 manually annotated business directory entries.
Downloads 15
Release Time : 5/20/2022

Model Overview

This model is specifically designed to identify named entities in 19th century French business directories, such as personal names, company names, industries, and location information. Suitable for historical document analysis scenarios.

Model Features

Historical Document Optimization
Specially optimized for the structure and linguistic characteristics of 19th century French business directories
High-Precision Annotation
Trained on 6,004 manually corrected high-quality annotated data entries
Domain-Specific
Focused on entity recognition in business directories, such as personal names, company names, industries, and location information

Model Capabilities

Identify named entities in historical documents
Process French business directory texts
Extract structured information

Use Cases

Historical Research
Digitization of Business Directories
Automatically identify personal names, company names, and address information in historical business directories
Improve the efficiency and accuracy of historical document digitization
Archival Management
Archive Index Creation
Extract key entity information from historical business directories to create indexes
Facilitate archive retrieval and management
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