Computing bounds for entropy of stationary Z^d Markov random fields
classification
🧮 math.DS
math-phmath.MPmath.PR
keywords
approximationsentropyepsilonstationaryaccurateboundscasecomputed
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For any stationary $\mZ^d$-Gibbs measure that satisfies strong spatial mixing, we obtain sequences of upper and lower approximations that converge to its entropy. In the case, $d=2$, these approximations are efficient in the sense that the approximations are accurate to within $\epsilon$ and can be computed in time polynomial in $1/\epsilon$.
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