Unsupervised regime detection for financial time series using embeddings and clustering.
- Updated
Jun 3, 2025 - Jupyter Notebook
Unsupervised regime detection for financial time series using embeddings and clustering.
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This project applies unsupervised learning to detect latent financial market regimes from macro time series data. It emphasizes stability-based model selection across preprocessing, dimensionality reduction, and clustering methods.
A research-grade, regime-aware decision intelligence prototype for portfolio allocation, integrating market state detection, adaptive alpha models, and fund-grade evaluation metrics.
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