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Twitter Emotion Deberta V3 Base

Developed by Emanuel
A text sentiment classification model fine-tuned on DeBERTa-v3, performing excellently on the emotion dataset.
Downloads 110
Release Time : 3/2/2022

Model Overview

This model is a fine-tuned version based on the DeBERTa-v3 architecture, specifically designed for text sentiment classification tasks, achieving high accuracy on the evaluation set.

Model Features

High accuracy
Achieves 92.55% accuracy on the emotion dataset test set.
Fine-tuning optimization
Optimized for sentiment classification performance through targeted fine-tuning based on DeBERTa-v3-base.
Comprehensive evaluation metrics
Provides multi-dimensional evaluation results including precision, recall, and F1 score.

Model Capabilities

Text sentiment classification
Multi-category emotion recognition

Use Cases

Social media analysis
Tweet sentiment analysis
Analyze the sentiment tendencies of Twitter tweets
Accurately identifies six emotions including anger, joy, and sadness.
Customer feedback analysis
Product review sentiment classification
Classify customer reviews by sentiment
Helps quickly identify negative feedback.
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