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Xlm Roberta Base Finetuned Swahili Finetuned Ner Swahili

Developed by mbeukman
This model is fine-tuned on the Swahili portion of the MasakhaNER dataset for named entity recognition tasks in Swahili text.
Downloads 14
Release Time : 3/2/2022

Model Overview

A Transformer model based on xlm-roberta-base architecture, fine-tuned for Swahili named entity recognition tasks, primarily used to identify entities such as person names, locations, organizations, and dates in text.

Model Features

African language support
Specially optimized for Swahili, filling the gap in NLP models for African languages
Multi-entity type recognition
Capable of recognizing various entity types including dates, person names, organization names, and locations
Efficient training
Fine-tuning can be completed in just 10-30 minutes on an NVIDIA RTX3090 GPU

Model Capabilities

Swahili text processing
Named entity recognition
News domain entity extraction

Use Cases

NLP research
Interpretability research
Used to study the interpretability and transfer learning characteristics of African language models
Low-resource language NLP
Serves as a benchmark model for low-resource language NLP research
Information extraction
News analysis
Extracting key entity information from Swahili news
F1 score reached 90.36
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