A stochastic embedding theorem recovers fundamental constants like k_B, ħ, and c from time series data and supports a superspace diffusion equation dg_ij = D_ij[g] dτ + ℓ_P dW_ij for gravity.
Robinson,A topological delay embedding theorem for infinite-dimensional dynamical systems, Nonlinearity18(5) (2005) 2135–2143
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From the Stochastic Embedding Sufficiency Theorem to a Superspace Diffusion Framework
A stochastic embedding theorem recovers fundamental constants like k_B, ħ, and c from time series data and supports a superspace diffusion equation dg_ij = D_ij[g] dτ + ℓ_P dW_ij for gravity.