Sharp hierarchical upper bounds on the critical two-point function for long-range percolation on $\mathbb{Z}^d$
Tom Hutchcroft

TL;DR
This paper establishes sharp hierarchical upper bounds on the average critical two-point function for long-range percolation on integer lattices, revealing insights into the critical behavior and critical exponents for different regimes.
Contribution
It proves that the average critical two-point function on $\mathbb{Z}^d$ is bounded above by the hierarchical lattice counterpart for $0<\alpha<d$, advancing understanding of critical phenomena.
Findings
Critical two-point function bounded above by hierarchical lattice estimate.
Bound is believed to be sharp for $\alpha<\alpha_c(d)$.
Results connect critical exponents between $\mathbb{Z}^d$ and hierarchical models.
Abstract
Consider long-range Bernoulli percolation on in which we connect each pair of distinct points and by an edge with probability , where is fixed and is a parameter. We prove that if then the critical two-point function satisfies \[ \frac{1}{|\Lambda_r|}\sum_{x\in \Lambda_r} \mathbf{P}_{\beta_c}(0\leftrightarrow x) \preceq r^{-d+\alpha} \] for every , where . In other words, the critical two-point function on is always bounded above on average by the critical two-point function on the hierarchical lattice. This upper bound is believed to be sharp for values of strictly below the crossover value , where the values of several critical exponents for long-range percolation on and the hierarchical…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Random Matrices and Applications · Bayesian Methods and Mixture Models
