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Distilbert Base Uncased Finetuned Emotion

Developed by esuriddick
A text classification model fine-tuned on the emotion dataset based on DistilBERT, designed to recognize six basic emotions (anger, fear, joy, love, sadness, and surprise).
Downloads 815
Release Time : 8/19/2023

Model Overview

This model is a fine-tuned version of DistilBERT, specifically designed for sentiment classification tasks on English Twitter messages, capable of accurately identifying six basic emotions.

Model Features

Efficient and Lightweight
Based on the DistilBERT architecture, it is smaller and faster than standard BERT models while maintaining high performance.
High Accuracy
Achieves 93.75% accuracy and 93.79% F1 score on the emotion validation dataset.
Specialized Emotion Recognition
Optimized specifically for six basic emotions (anger, fear, joy, love, sadness, and surprise).

Model Capabilities

Text classification
Emotion recognition
Natural language processing

Use Cases

Social media analysis
Twitter sentiment analysis
Analyze user sentiment in Twitter messages for market research or public opinion monitoring.
Can accurately identify six basic emotions with an accuracy rate of 93.75%.
Customer service
Customer feedback sentiment analysis
Automatically analyze sentiment tendencies in customer feedback to help improve service quality.
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