daniel-st3/Daniel_Rodriguez_MSc_Thesis_Final
A machine learning pipeline analyzing how political bias in financial news amplifies retail investor sentiment and impacts stock market dynamics. Includes NLP feature engineering, time-series cross-validation, and reproducibility artifacts for S&P 500/NASDAQ tickers.
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Jan 20, 2026
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