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Afroxlmr Large Ner Masakhaner 1.0 2.0

Developed by masakhane
A named entity recognition model for 21 African languages, fine-tuned based on the Davlan/afro-xlmr-large model, supporting the recognition of four entity types: dates, locations, organizations, and person names.
Downloads 416
Release Time : 12/15/2022

Model Overview

This model is a specialized named entity recognition (NER) model for African languages, covering 21 African languages, capable of identifying four entity types: dates and times (DATE), locations (LOC), organizations (ORG), and person names (PER).

Model Features

Multilingual Support
Supports named entity recognition for 21 African languages, covering a wide range of African language needs.
High Performance
Performs excellently on the MasakhaNER 1.0 and 2.0 datasets, achieving average F1 scores of 85.1 and 87.7, respectively.
Rich Entity Types
Capable of recognizing four entity types: dates, locations, organizations, and person names, meeting diverse NER requirements.

Model Capabilities

Named Entity Recognition
Multilingual Text Processing

Use Cases

News Analysis
African News Entity Extraction
Extracting key entities (e.g., person names, organizations, locations) from news articles in African languages.
High-accuracy entity recognition, with F1 scores exceeding 90% for multiple languages.
Linguistic Research
African Language Entity Annotation
Used for entity annotation and analysis in linguistic research on African languages.
Provides high-quality entity annotation data to support linguistic research.
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