R

Rubert Tiny Sentiment Balanced

Developed by cointegrated
A Russian short-text sentiment classification model fine-tuned from rubert-tiny, supporting negative/neutral/positive three-way classification
Downloads 63.23k
Release Time : 3/2/2022

Model Overview

This model is specifically designed for sentiment analysis of Russian short texts. By fine-tuning the rubert-tiny model, it can accurately identify negative, neutral, and positive emotions in text.

Model Features

Balanced dataset training
Balanced training data from different sources and categories using upsampling and downsampling techniques
Multi-source evaluation
Comprehensively evaluated on 7 Russian datasets from different domains
Lightweight model
Based on rubert-tiny architecture with low computational resource requirements

Model Capabilities

Russian text sentiment classification
Sentiment tendency scoring
Sentiment probability distribution calculation

Use Cases

Customer feedback analysis
Restaurant review analysis
Analyze customers' sentiment tendencies towards restaurant dishes and services
Can accurately identify negative reviews such as 'the fish jelly tastes terrible'
Social media monitoring
Public opinion analysis
Monitor sentiment tendencies towards brands or products on social media
Achieves F1 scores of 0.5-0.98 across different domain datasets
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