English

Almost Sure Diffusion Approximation in Averaging: Direct Proofs with Rough Paths Flavors

Probability 2025-06-09 v3

Abstract

We consider again the fast-slow motions setups in the continuous time dXN(t)dt=N1/2\sig(XN(t))(ξ(tN))+b(XN(t)),t[0,T]\frac {dX_N(t)}{dt}=N^{1/2} \sig(X_N(t))(\xi(tN))+b(X_N(t)),\, t\in [0,T] and the discrete time XN((n+1)/N)=XN(n/N)+N1/2\sig(XN(n/N))ξ(n)+N1b(XN(n/N)),n=0,1,...,[TN]X_N((n+1)/N)=X_N(n/N)+N^{-1/2}\sig(X_N(n/N))\xi(n)+N^{-1}b(X_N(n/N)),\, n=0,1,...,[TN] where \sig\sig and bb are smooth matrix and vector functions, respectively, ξ\xi is a centered vector stationary stochastic process with weak dependence in time and NN is a big parameter. We obtain estimates for the almost sure approximations of the process XNX_N by certain diffusion process \Sig\Sig. In \cite{FK} and in other recent papers concerning similar setups the results were obtained relying fully on the rough paths theory. Here we derive our probabilistic results as corollaries of quite general deterministic estimates which are obtained with all details provided following somewhat ideology of the rough paths theory but not relying on this theory per se which should allow a more general readership to follow complete arguments.

Keywords

Cite

@article{arxiv.2401.05038,
  title  = {Almost Sure Diffusion Approximation in Averaging: Direct Proofs with Rough Paths Flavors},
  author = {Yuri Kifer},
  journal= {arXiv preprint arXiv:2401.05038},
  year   = {2025}
}

Comments

24 pages

R2 v1 2026-06-28T14:13:03.323Z