R

Rubert Tiny Toxicity

Developed by cointegrated
Fine-tuned Russian text toxicity multi-label classification model based on rubert-tiny
Downloads 10.77k
Release Time : 3/2/2022

Model Overview

This model is specifically designed for classifying toxicity and inappropriateness in Russian informal short texts (e.g., social media comments), supporting multi-label classification tasks.

Model Features

Multi-label Toxicity Classification
Capable of identifying multiple toxicity categories in text simultaneously, including insults, profanity, threats, etc.
Russian Language Optimization
Specially optimized for Russian informal short texts, suitable for social media comment analysis.
High Precision Detection
Achieves ROC AUC scores above 0.98 for most labels on the development set (0.8295 for dangerous content).

Model Capabilities

Russian Text Toxicity Detection
Multi-label Classification
Social Media Comment Analysis
Inappropriate Content Identification

Use Cases

Content Moderation
Social Media Comment Filtering
Automatically identifies and filters insulting, threatening, or inappropriate content on social media.
Effectively identifies over 95% of toxic content
User Behavior Analysis
User Risk Scoring
Assesses users' potential risk levels based on their posted content.
Identifies 93% of dangerous content
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