Aurélien Alfonsi

2papers

2 Papers

PRMay 21, 2019
A generic construction for high order approximation schemes of semigroups using random grids

Aurélien Alfonsi, Vlad Bally

Our aim is to construct high order approximation schemes for general semigroups of linear operators $P_{t},t\geq 0$. In order to do it, we fix a time horizon $T $ and the discretization steps $h_{l}=\frac{T}{n^{l}},l\in \mathbb{N}$ and we suppose that we have at hand some short time approximation operators $Q_{l}$ such that $P_{h_{l}}=Q_{l}+O(h_{l}^{1+α})$ for some $α>0$. Then, we consider random time grids $Π(ω)=\{t_0(ω)=0<t_{1}(ω)<...<t_{m}(ω)=T\}$ such that for all $1\le k\le m$, $t_{k}(ω)-t_{k-1}(ω)=h_{l_{k}}$ for some $l_{k}\in \mathbb{N}$, and we associate the approximation discrete semigroup $P_{T}^{Π(ω)}=Q_{l_{n}}...Q_{l_{1}}.$ Our main result is the following: for any approximation order $ν$, we can construct random grids $Π_{i}(ω)$ and coefficients $c_{i}$, with $i=1,...,r$ such that \[ P_{t}f=\sum_{i=1}^{r}c_{i}\mathbb{E}(P_{t}^{Π_{i}(ω)}f(x))+O(n^{-ν}) \]% with the expectation concerning the random grids $Π_{i}(ω).$ Besides, $\text{Card}(Π_{i}(ω))=O(n)$ and the complexity of the algorithm is of order $n$, for any order of approximation $ν$. The standard example concerns diffusion processes, using the Euler approximation for~$Q_l$. In this particular case and under suitable conditions, we are able to gather the terms in order to produce an estimator of $P_tf$ with finite variance. However, an important feature of our approach is its universality in the sense that it works for every general semigroup $P_{t}$ and approximations. Besides, approximation schemes sharing the same $α$ lead to the same random grids $Π_{i}$ and coefficients $c_{i}$. Numerical illustrations are given for ordinary differential equations, piecewise deterministic Markov processes and diffusions.

PRMay 14, 2019
Approximation of Optimal Transport problems with marginal moments constraints

Aurélien Alfonsi, Rafaël Coyaud, Virginie Ehrlacher et al.

Optimal Transport (OT) problems arise in a wide range of applications, from physics to economics. Getting numerical approximate solution of these problems is a challenging issue of practical importance. In this work, we investigate the relaxation of the OT problem when the marginal constraints are replaced by some moment constraints. Using Tchakaloff's theorem, we show that the Moment Constrained Optimal Transport problem (MCOT) is achieved by a finite discrete measure. Interestingly, for multimarginal OT problems, the number of points weighted by this measure scales linearly with the number of marginal laws, which is encouraging to bypass the curse of dimension. This approximation method is also relevant for Martingale OT problems. We show the convergence of the MCOT problem toward the corresponding OT problem. In some fundamental cases, we obtain rates of convergence in $O(1/n)$ or $O(1/n^2)$ where $n$ is the number of moments, which illustrates the role of the moment functions. Last, we present algorithms exploiting the fact that the MCOT is reached by a finite discrete measure and provide numerical examples of approximations.