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jump-diffusion-dynamics

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Unified theoretical–empirical verification of the Cognitive Uncertainty Principle (CUP). A jump–diffusion model reveals an epistemic phase boundary between a Fisher regime (Δε·ΔDₖₗ ≥ 1.17×10⁻⁴) and a KL regime (Δε·ΔDₖₗ ≈ 1.71×10⁻²). The canonical bound Δβ·KL ≥ 3.94×10⁻⁴ remains robust.

  • Updated Nov 5, 2025
  • Python

📊 Verify the Cognitive Uncertainty Principle through empirical and theoretical methods, providing complete reproducibility with code, data, and figures.

  • Updated Nov 15, 2025
  • Python

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