Cyberoctane29/TikTok-Claims-Classification-End-to-End-Analysis-and-Modeling
This project involves analyzing TikTok videos to classify claims vs. opinions using Python. It includes EDA, statistical tests, logistic regression, and ML models (Random Forest, XGBoost) to support content moderation. Built with pandas, scikit-learn, and Tableau, the solution helps TikTok automate content review and enhance moderation efficiency.
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Jul 23, 2025
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