A commonly used approach to analyzing stochastic differential equations (SDEs) relies on performing Monte Carlo simulation with a discrete-time counterpart. In this paper we study the impact of such a time-discretization when assessing the stationary tail distribution. For a family of semi-implicit Euler discretization schemes with time-step h > 0, we quantify the relative error due to the discretization, as a function of h and the exceedance level x. By studying the existence of certain (polynomial and exponential) moments, using a sequence of prototypical examples, we demonstrate that this error may tend to 0 or ¥. The results show that the original shape of the tail can be heavily affected by the discretization. The cases studied ...
Stochastic differential equations SDEs are used to model continuous time phenomena appearing in many...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
Stochastic differential-algebraic equations (SDAEs) arise as a mathematical model for electrical net...
A commonly used approach to analyzing stochastic differential equations (SDEs) relies on performing ...
We look at numerical methods for simulation of stochastic differential equations exhibiting volatili...
Numerical methods for stochastic differential equations, including Taylor expansion approximations, ...
We considered strong convergent stochastic schemes for the simulation of stochastic differential equ...
The Euler scheme is a well-known method of approximation of solutions of stochastic differential equ...
We consider the long-time behavior of an explicit tamed Euler scheme applied to a class of stochasti...
AbstractThe Euler scheme is a well-known method of approximation of solutions of stochastic differen...
In the present paper, we first deal with the discretization of stochastic differential equ...
There is a lack of appropriate replication of the asymptotical behaviour of stationary stochastic di...
International audienceWe consider the approximate Euler scheme for Levy-driven stochastic differenti...
Using concrete examples, we discuss the current and potential use of stochastic ordinary differentia...
This paper is concerned with the problem of simulation of (Xt)0≤t≤T, the solution of a stochastic di...
Stochastic differential equations SDEs are used to model continuous time phenomena appearing in many...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
Stochastic differential-algebraic equations (SDAEs) arise as a mathematical model for electrical net...
A commonly used approach to analyzing stochastic differential equations (SDEs) relies on performing ...
We look at numerical methods for simulation of stochastic differential equations exhibiting volatili...
Numerical methods for stochastic differential equations, including Taylor expansion approximations, ...
We considered strong convergent stochastic schemes for the simulation of stochastic differential equ...
The Euler scheme is a well-known method of approximation of solutions of stochastic differential equ...
We consider the long-time behavior of an explicit tamed Euler scheme applied to a class of stochasti...
AbstractThe Euler scheme is a well-known method of approximation of solutions of stochastic differen...
In the present paper, we first deal with the discretization of stochastic differential equ...
There is a lack of appropriate replication of the asymptotical behaviour of stationary stochastic di...
International audienceWe consider the approximate Euler scheme for Levy-driven stochastic differenti...
Using concrete examples, we discuss the current and potential use of stochastic ordinary differentia...
This paper is concerned with the problem of simulation of (Xt)0≤t≤T, the solution of a stochastic di...
Stochastic differential equations SDEs are used to model continuous time phenomena appearing in many...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
Stochastic differential-algebraic equations (SDAEs) arise as a mathematical model for electrical net...