We consider numerical schemes for computing the linear response of steady-state averages with respect to a perturbation of the drift part of the stochastic differential equation. The schemes are based on the Girsanov change-of-measure theory in order to reweight trajectories with factors derived from a linearization of the Girsanov weights. The resulting estimator is the product of a time average and a martingale correlated to this time average. We investigate both its discretization and finite-time approximation errors. The designed numerical schemes are shown to be of a bounded variance with respect to the integration time which is desirable feature for long time simulations. We also show how the discretization error can be improved to se...
We study the convergence properties of the projected stochastic approximation (SA) algo-rithm used t...
Numerical approximation of the long time behavior of a stochastic differential equation (SDE) is con...
A family of one-dimensional linear stochastic approximation procedures in continuous time where proc...
We consider numerical schemes for computing the linear response of steady-state averages with respec...
34 pages, 4 figuresWe introduce a new class of estimators for the linear response of steady states o...
Numerical approximation of the long time behavior of a stochastic differential equation (SDE) is con...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
To sample from distributions in high dimensional spaces or finite large sets di-rectly is not feasib...
The estimation of the linearized drift for stochastic differential equations with equilibrium points...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
International audienceWe propose a new scheme for the long time approximation of a diffusion when th...
In this thesis we propose a numerical approximation for the equilibrium measure of a McKean Vlasov s...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
In this dissertation, we consider the problem of inferring unknown parameters of stochastic differen...
The understanding of adaptive algorithms for stochastic differential equations (SDEs) is an open are...
We study the convergence properties of the projected stochastic approximation (SA) algo-rithm used t...
Numerical approximation of the long time behavior of a stochastic differential equation (SDE) is con...
A family of one-dimensional linear stochastic approximation procedures in continuous time where proc...
We consider numerical schemes for computing the linear response of steady-state averages with respec...
34 pages, 4 figuresWe introduce a new class of estimators for the linear response of steady states o...
Numerical approximation of the long time behavior of a stochastic differential equation (SDE) is con...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
To sample from distributions in high dimensional spaces or finite large sets di-rectly is not feasib...
The estimation of the linearized drift for stochastic differential equations with equilibrium points...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
International audienceWe propose a new scheme for the long time approximation of a diffusion when th...
In this thesis we propose a numerical approximation for the equilibrium measure of a McKean Vlasov s...
The convergence properties of a very general class of adaptive recursive algorithms for the identifi...
In this dissertation, we consider the problem of inferring unknown parameters of stochastic differen...
The understanding of adaptive algorithms for stochastic differential equations (SDEs) is an open are...
We study the convergence properties of the projected stochastic approximation (SA) algo-rithm used t...
Numerical approximation of the long time behavior of a stochastic differential equation (SDE) is con...
A family of one-dimensional linear stochastic approximation procedures in continuous time where proc...