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Almost sure diffusion approximation in averaging via rough paths theory

Peter Friz, Yuri Kifer

Abstract

The paper deals with the fast-slow motions setups in the continuous time $\frac {dX^\ve(t)}{dt}=\frac 1\ve\sig(X^\ve(t))ξ(t/\ve^2)+b(X^\ve(t)),\, t\in [0,T]$ and the discrete time $X_N((n+1)/N)=X_N(n/N)+N^{-1/2}\sig(X_N(n/N))ξ(n))+N^{-1}b(X_N(n/N))ξ(n)$, $n=0,1,...,[TN]$ where $\sig$ and $b$ are smooth matrix and vector functions, respectively, $ξ$ is a centered stationary vector stochastic process and $\ve, 1/N$ are small parameters. We derive, first, estimates in the strong invariance principles for sums $S_{N}(t)=N^{-1/2}\sum_{0\leq k< [Nt]}ξ(k)$ and iterated sums $\bbS^{ij}_{N}(t)=N^{-1}\sum_{0\leq k<l<[Nt]}ξ_i(k)ξ_j(l)$ together with the corresponding results for integrals in the continuous time case which, in fact, yields almost sure invariance principles for iterated sums and integrals of any order and, moreover, implies laws of iterated logarithm for these objects. Then, relying on the rough paths theory, we obtain strong almost sure approximations of processes $X^\ve$ and $X_N$ by corresponding diffusion processes $Ξ^\ve$ and $Ξ_N$, respectively. Previous results for the above setup dealt either with weak or moment diffusion approximations and not with almost sure approximation which is the new and natural generalization of well known works on strong invariance principles for sums of weakly dependent random variables.

Almost sure diffusion approximation in averaging via rough paths theory

Abstract

The paper deals with the fast-slow motions setups in the continuous time and the discrete time , where and are smooth matrix and vector functions, respectively, is a centered stationary vector stochastic process and are small parameters. We derive, first, estimates in the strong invariance principles for sums and iterated sums together with the corresponding results for integrals in the continuous time case which, in fact, yields almost sure invariance principles for iterated sums and integrals of any order and, moreover, implies laws of iterated logarithm for these objects. Then, relying on the rough paths theory, we obtain strong almost sure approximations of processes and by corresponding diffusion processes and , respectively. Previous results for the above setup dealt either with weak or moment diffusion approximations and not with almost sure approximation which is the new and natural generalization of well known works on strong invariance principles for sums of weakly dependent random variables.

Paper Structure

This paper contains 38 sections, 31 theorems, 447 equations.

Key Result

Theorem \oldthetheorem

Suppose that $X_N$ is defined by (2.4), (2.5)--(2.7) hold true and assume that Then the stationary sequence of random vectors $\xi(n),\,-\infty<n<\infty$ can be redefined preserving its distributions on a sufficiently rich probability space which contains also a $e$-dimensional Brownian motion ${\mathcal{W}}$ with the covariance matrix ${\varsigma}$ (at the time 1) so that for where $X_N(0)=\Xi_N

Theorems & Definitions (58)

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  • ...and 48 more