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Tiroberta Abusiveness Detection

Developed by fgaim
A Tigrinya abusive content detection model fine-tuned on TiRoBERTa, trained on 13,717 YouTube comments dataset
Downloads 210
Release Time : 5/18/2023

Model Overview

Specially designed for Tigrinya abusive language detection, supporting both Ge'ez script and Latin transliteration, suitable for content moderation research in low-resource language environments

Model Features

Dual-script support
Processes both Ge'ez script and Latin-transliterated Tigrinya texts, adapting to real-world scenarios
Multi-task learning framework
Extendable to support abusive detection, sentiment analysis, and topic classification tasks
Low-resource optimization
Pre-trained architecture specifically designed for low-resource languages like Tigrinya
Culturally sensitive annotation
Annotated by native speakers to ensure cultural context accuracy

Model Capabilities

Tigrinya text classification
Abusive content identification
Multi-task learning support
Dual-script processing

Use Cases

Content moderation
Social media comment filtering
Automatically detects abusive content in Tigrinya YouTube comments
86.7% accuracy, reducing manual review workload
Academic research
Low-resource NLP research
Serves as baseline model for Tigrinya NLP tasks
Provides benchmark performance on 13k+ annotated dataset
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