On the dynamics of trap models in Z^d
Luiz Renato Fontes, Pierre Mathieu

TL;DR
This paper studies trap models on Z^d, analyzing their long-term behavior and aging properties, revealing convergence to a process involving alpha-stable subordinators under certain conditions.
Contribution
It introduces a convergence result for the trap process to an alpha-stable subordinator-based process and establishes aging phenomena with strengthened results under additional conditions.
Findings
Convergence of the trap process to a stable subordinator-based process.
Aging results for the trap process with scaling limits.
Stronger convergence and aging results under additional intersection size conditions.
Abstract
We consider trap models on Z^d, namely continuous time Markov jump process on Z^d with embedded chain given by a generic discrete time random walk, and whose mean waiting time at x is given by tau_x, with tau = (tau_x, x in Z^d) a family of positive iid random variables in the basin of attraction of an alpha-stable law, 0<alpha<1. We may think of x as a trap, and tau_x as the depth of the trap at x. We are interested in the trap process, namely the process that associates to time t the depth of the currently visited trap. Our first result is the convergence of the law of that process under suitable scaling. The limit process is given by the jumps of a certain alpha-stable subordinator at the inverse of another alpha-stable subordinator, correlated with the first subordinator. For that result, the requirements for the embedded random walk are a) the validity of a law of large numbers for…
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