Kimuyu-Charles/Financial-Time-Series-Forecasting-ML-DL
This project explores forecasting for financial time series using a mix of traditional baselines and modern machine/deep learning models. The goal is not only to improve forecast accuracy, but also to understand when additional model complexity is justified and when simple models are good enough.
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Jan 06, 2026
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