Michaelrobins938/first-principles-attribution
First-principles attribution framework combining Markov chains (causality), Shapley values (fairness), and Bayesian UQ. Resolves epistemic gap between correlation and causation. Whitepaper v2.0.0 (735 lines). React 18 dashboard. MIT licensed. Production-ready.
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Language
TypeScript
License
MIT
Last pushed
Jan 30, 2026
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