shreya1m/Social_Media_Sentiment_Analysis
Sentiment analysis project using Random Forest Classifier for classifying social media text into Positive, Negative, and Neutral sentiments. Achieved 69% accuracy with cross-validation, featuring text preprocessing, TF-IDF vectorization, and insights into user opinions.
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Oct 23, 2024
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