AnderCruz/Stock-Price-Forecasting-Seq2Seq-Prophet-XGBoost-Ensemble
A comprehensive machine learning framework for multi-step stock price forecasting using ensemble methods combining deep learning, statistical models, and gradient boosting. This project implements a sophisticated stock price forecasting system that combines multiple machine learning approache.
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Nov 10, 2025
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