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Infinite Random Power Towers

Mark Dalthorp

Abstract

We prove a probabilistic generalization of the classic result that infinite power towers, $c^{c^{\dots}}$, converge if and only if $c\in[e^{-e},e^{1/e}]$. Given an i.i.d. sequence $\{A_i\}_{i\in\mathbb N}$, we find that convergence of the power tower $A_1^{A_2^{\dots}}$ is determined by the bounds of $A_1$'s support, $a=\inf(\mathrm{supp}(A_1))$ and $b=\sup(\mathrm{supp}(A_1))$. When $b\in[e^{-e},e^{1/e}]$, $a<1<b$, or $a=0$, the power tower converges almost surely. When $b<e^{-e}$, we define a special function $B$ such that almost sure convergence is equivalent to $a<B(b)$. Only in the case when $a=1$ and $b>e^{1/e}$ are the values of $a$ and $b$ insufficient to determine convergence. We show a rather complicated necessary and sufficient condition for convergence when $a=1$ and $b$ is finite. We also briefly discuss the relationship between the distribution of $A_1$ and the corresponding power tower $T=A_1^{A_2^{\dots}}$. For example, when $T\sim\mathrm{Unif}[0,1]$, then the corresponding distribution of $A_1$ is given by $UV$ where $U,V\sim\mathrm{Unif}[0,1]$ are independent. We generalize this example by showing that for $U\sim\mathrm{Unif}[α,β]$ and $r\in\mathbb R$, there exists an i.i.d. sequence $\{A_i\}_{i\in\mathbb N}$ such that $U^r \stackrel{d}{=} A_1^{A_2^{\dots}}$ if and only if $r\in[0, \frac1{1+\log β}]$.}

Infinite Random Power Towers

Abstract

We prove a probabilistic generalization of the classic result that infinite power towers, , converge if and only if . Given an i.i.d. sequence , we find that convergence of the power tower is determined by the bounds of 's support, and . When , , or , the power tower converges almost surely. When , we define a special function such that almost sure convergence is equivalent to . Only in the case when and are the values of and insufficient to determine convergence. We show a rather complicated necessary and sufficient condition for convergence when and is finite. We also briefly discuss the relationship between the distribution of and the corresponding power tower . For example, when , then the corresponding distribution of is given by where are independent. We generalize this example by showing that for and , there exists an i.i.d. sequence such that if and only if .}
Paper Structure (13 sections, 13 theorems, 128 equations, 2 figures)

This paper contains 13 sections, 13 theorems, 128 equations, 2 figures.

Key Result

corollary 1

If $\{A_n\}_{n\in\infty}$ is an i.i.d. sequence of random variables on $[0,e^{\frac{1}{e}}]$ such that then the infinite random power tower $\mathop{\mathlarger{\mathrm E}}\limits_{i=1}^\infty A_i$ converges almost surely.

Figures (2)

  • Figure 1: Iterating exponential functions showing the four possible behaviors: a. Increasing convergence to a fixed point when $c\in[1,e^{\frac{1}{e}}]$; b. Increasing to infinity when $c>e^{\frac{1}{e}}$; c. Alternating convergence to a fixed point when $c\in[e^{-e},1]$; d. Oscillation in the limit when $c<e^{-e}$.
  • Figure 2: Limiting behavior of $c,c^c,c^{c^c},\dots$ for $c$ on either side of $e^{-e}\approx 0.06$

Theorems & Definitions (20)

  • corollary 1: Of Proposition 5.1 in ARTICLE:1
  • theorem 1
  • corollary 2: Convergence conditions
  • corollary 3: Divergence conditions
  • proof
  • lemma 1
  • lemma 2
  • theorem 2
  • proof
  • proof
  • ...and 10 more