i-benjelloun/text_emotions_detection
Detection of fine-grained emotions in texts
Leverages the GoEmotions dataset to detect 27 distinct emotions plus neutral classification from Reddit comments, addressing multi-label classification challenges through class balancing techniques. Implements both baseline ML/NLP models and fine-tuned BERT transformers, with optional exclusion of neutral samples for improved emotion specificity. Includes a Streamlit web application demonstrating real-time emotion detection and probabilistic emotion scoring on user input.
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Apr 06, 2021
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