Arabic Ner Ace
A
Arabic Ner Ace
Developed by ychenNLP
Arabic and English named entity recognition model based on GigaBERTv4, supporting multiple entity type recognition
Downloads 105
Release Time : 6/29/2022
Model Overview
This model is a sequence labeling model based on the GigaBERTv4 architecture, specifically designed for Arabic and English named entity recognition tasks, supporting the identification of various entity types such as persons, vehicles, geopolitical entities, etc.
Model Features
Multilingual Support
Supports named entity recognition in both Arabic and English
High Accuracy Recognition
Achieves F1 scores of 89.4 (Arabic) and 88.8 (English) on the ACE2005 dataset
Broad Entity Coverage
Supports recognition of 7 entity types, including persons, organizations, locations, etc.
Model Capabilities
Arabic Named Entity Recognition
English Named Entity Recognition
Multi-type Entity Classification
Use Cases
News Analysis
Political News Entity Extraction
Identifying key persons, organizations, and geographic locations from political news
Successfully identified entities such as 'Turkish Minister of Justice' and 'Ankara' in the example
Social Media Monitoring
Social Media Entity Monitoring
Analyzing key entities in social media content
Can identify locations and organizations related to protest activities
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