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Tertiles and the time constant

Published online by Cambridge University Press:  16 July 2020

Daniel Ahlberg*
Affiliation:
Stockholm University
*
*Postal address: Department of Mathematics, Stockholm University, SE - 106 91 Stockholm, Sweden. Email address: daniel.ahlberg@math.su.se
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Abstract

We consider planar first-passage percolation and show that the time constant can be bounded by multiples of the first and second tertiles of the weight distribution. As a consequence, we obtain a counter-example to a problem proposed by Alm and Deijfen (2015).

Type
Research Papers
Copyright
© Applied Probability Trust 2020

1. A theorem and a counter-example

In first-passage percolation on the square lattice, weights $\omega_e$ are assigned independently to the edges according to some distribution F on $[0,\infty)$ . The resulting weighted graph induces a random (pseudo-)metric T on ${\mathbb Z}^2$ as follows: For all $x,y\in{\mathbb Z}^2$ , let

\begin{equation*}\textstyle{T(x,y)\,:\!=\inf\big\{\sum_{e\in\pi}\ \omega_e\,:\,\pi\text{ is a self-avoiding path connecting \textit{x} to \textit{y}}\big\}}.\end{equation*}

Let Y denote the minimum of four independent variables distributed as F. When $\mathbb{E}[Y]<\infty$ the limit $\mu\,:\!=\lim_{n\to\infty}\frac{1}{n}T\big((0,0),(n,0)\big)$ exists almost surely as a consequence of Kingman’s subadditive ergodic theorem. However, as is well known, the limit exists in probability for all weight distributions. See, e.g, [Reference Auffinger, Damron and Hanson2] for background and details.

Upper bounds for $\mu$ can be expressed in terms of moments involving F; see, e.g., [Reference Smythe and Wierman6]. The moral of this note is that moments are in general poor estimates of $\mu$ . We provide bounds in terms of the first and second tertiles. A related lower bound has previously been obtained by Cox [Reference Cox3]. Our proof is much shorter. Let $t_q\,:\!=\inf\{t\ge0\,:\,F(t)\ge q\}$ .

Theorem 1. For any F, the time constant $\mu$ satisfies $\tfrac{1}{100}t_{1/3}\,\le\,\mu\,\le\,2t_{2/3}.$

In $d\ge2$ dimensions the arguments can be adapted to give $\frac{1}{4} t_{1/2d}\le\mu\le dt_{p_{\rm c}(d)}$ , where $p_{\rm c}(d)\sim1/d$ is the critical probability for oriented percolation on ${\mathbb Z}^d$ .

Proof. The connoisseur will note that the upper bound is immediate from the ‘flat edge’ of Durrett and Liggett [Reference Durrett and Liggett4]. Spelling things out, let $A_n$ denote the event that there exists a path of length n connecting the origin to a point in $\{(x,y)\in{\mathbb Z}^2\,:\,x+y=n,x\ge n/2,y\ge0\}$ having total weight at most $nt_{2/3}+M$ . Similarly, let $A^{\prime}_n$ denote the event that there is a path of length n connecting (n, 0) to $\{(x,x)\in{\mathbb Z}^2\,:\,0\le x\le n/2\}$ having total weight at most $nt_{2/3}+M$ . Since $2/3$ exceeds the critical probability for oriented percolation on ${\mathbb Z}^2$ (see [Reference Liggett5]), standard results in percolation theory (see [Reference Durrett and Liggett4]) show that for large M we have $\mathbb{P}(A_n)=\mathbb{P}(A^{\prime}_n)\ge3/4$ , uniformly in n. On the intersection $A_n\cap A^{\prime}_n$ , which occurs with probability at least $1/2$ , we have $T\big((0,0),(n,0)\big)$ bounded by $2nt_{2/3}+2M$ , thus implying that $\mu\le 2t_{2/3}$ .

The lower bound is inspired by an argument explored by Smythe and Wierman [Reference Smythe and Wierman6], who in turn cite Hammersley. Given $\delta>0$ , let $N_n$ denote the number of self-avoiding walks of length n starting at the origin that have fewer than $\delta n$ edges with $\omega_e\ge t_{1/3}$ . The number of self-avoiding walks of length n is at most $2.7^n$ for large n (see [Reference Smythe and Wierman6, p. 24]). For a given path of length n, the number of edges with $\omega_e\ge t_{1/3}$ is binomially distributed with parameters n and $p\ge 2/3$ . Let X be binomial with parameters n and $2/3$ . For $\beta>0$ Markov’s inequality gives

\begin{equation*}\mathbb{P}(X<\delta n)\,=\,\mathbb{P}\big(n-X>(1-\delta)n\big)\,\le\, {\rm e}^{-\beta(1-\delta)n}\mathbb{E}\big[{\rm e}^{\beta(n-X)}\big]\,=\,\big[\tfrac{1}{3}{\rm e}^{\beta\delta}+\tfrac{2}{3}{\rm e}^{-\beta(1-\delta)}\big]^n.\end{equation*}

Set $\beta=5$ and $\delta=1/100$ . Monotonicity of the binomial distribution then gives

\begin{equation*}\mathbb{P}(N_n\ge1)\,\le\,\mathbb{E}[N_n]\,\le\,2.7^n\,\mathbb{P}(X<\delta n)\,\le\, 2.7^n\cdot .36^n\,=\,.972^n.\end{equation*}

On $\{N_n=0\}$ we have $T\big((0,0),(n,0)\big)\ge \frac{n}{100} t_{1/3}$ , so $\mu\ge \frac{1}{100}t_{1/3}$ , as required. □

We have noted that for many common distributions $2t_{2/3}$ exceeds the mean of F. Nevertheless, it is curious that one may disregard as much as a third of the mass of a distribution and yet produce general upper and lower bounds on $\mu$ . A more careful analysis should be able to increase the fraction $1/3$ , and decrease $2/3$ , arbitrarily close to $1/2$ . A conversation with Michael Damron led to the following examples, suggesting that the median cannot be used to obtain general upper nor lower bounds on $\mu$ : Let $(F_n)_{n\ge1}$ put mass $1/2$ at 1, be fully supported on [0,1], and converging weakly to the balanced Bernoulli distribution. Let $(F^{\prime}_n)_{n\ge1}$ put mass $1/2$ at 1, be fully supported on $[1,\infty)$ , with mass $1/2$ diverging in the limit. In all cases the median is 1. By continuity, the time constant for $F_n$ tends to zero as $n\to\infty$ . We believe further that the time constant for $F^{\prime}_n$ tends to infinity with n, although this requires an argument.

Based on simulations, it was suggested in [Reference Alm and Deijfen1, p. 668], and restated in [Reference Auffinger, Damron and Hanson2, Question 12], that $\mu\ge\mathbb{E}[Y]$ should hold in great generality, at least when F puts no mass at zero. The above upper bound on $\mu$ provides a fairly general counter-example: Let F be any distribution on $[0,\infty)$ that puts mass at least $2/3$ on [0,1] and mass at least $1/6$ on $[3888,\infty)$ . Then $\mu\le2$ , whereas an easy calculation gives $\mathbb{E}[Y]\ge3$ .

References

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