Modelling random dynamical systems in continuous time, diffusion processes are a powerful tool in many areas of science. Model parameters can be estimated from time-discretely observed processes using Markov chain Monte Carlo (MCMC) methods that introduce auxiliary data. These methods typically approximate the transition densities of the process numerically, both for calculating the posterior densities and proposing auxiliary data. Here, the Euler-Maruyama scheme is the standard approximation technique. However, the MCMC method is computationally expensive. Using higher-order approximations may accelerate it, but the specific implementation and benefit remain unclear. Hence, we investigate the utilization and usefulness of higher-order appr...
Diffusion models provide a natural way to describe dynamic systems that change continuously in time....
We address the problem of parameter estimation for diffusion driven stochastic volatility models thr...
In recent years, dynamical modelling has been provided with a range of breakthrough methods to perfo...
Pieschner S, Fuchs C. Bayesian inference for diffusion processes: using higher-order approximations ...
This article proposes a new Bayesian Markov chain Monte Carlo (MCMC) methodology for estimation of a...
This work consists of two separate parts. In the first part we extend the work on exact simulation o...
We introduce a Multilevel Monte Carlo method for approximating the transitiondensity for discretely ...
In this paper we propose a Bayesian method for estimating hyperbolic diffusion models. The approach ...
Estimation of parameters of a diffusion based on discrete time observations poses a difficult proble...
We examine the performance of a strategy for Markov chain Monte Carlo (MCMC) developed by simulating...
Multilevel Monte Carlo is a novel method for reducing the computational cost when computing conditio...
State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes a...
State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes a...
Diffusion process models are widely used in science, engineering, and finance. Most diffusion proces...
Given a Markov chain with uncertain transi-tion probabilities modelled in a Bayesian way, we investi...
Diffusion models provide a natural way to describe dynamic systems that change continuously in time....
We address the problem of parameter estimation for diffusion driven stochastic volatility models thr...
In recent years, dynamical modelling has been provided with a range of breakthrough methods to perfo...
Pieschner S, Fuchs C. Bayesian inference for diffusion processes: using higher-order approximations ...
This article proposes a new Bayesian Markov chain Monte Carlo (MCMC) methodology for estimation of a...
This work consists of two separate parts. In the first part we extend the work on exact simulation o...
We introduce a Multilevel Monte Carlo method for approximating the transitiondensity for discretely ...
In this paper we propose a Bayesian method for estimating hyperbolic diffusion models. The approach ...
Estimation of parameters of a diffusion based on discrete time observations poses a difficult proble...
We examine the performance of a strategy for Markov chain Monte Carlo (MCMC) developed by simulating...
Multilevel Monte Carlo is a novel method for reducing the computational cost when computing conditio...
State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes a...
State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes a...
Diffusion process models are widely used in science, engineering, and finance. Most diffusion proces...
Given a Markov chain with uncertain transi-tion probabilities modelled in a Bayesian way, we investi...
Diffusion models provide a natural way to describe dynamic systems that change continuously in time....
We address the problem of parameter estimation for diffusion driven stochastic volatility models thr...
In recent years, dynamical modelling has been provided with a range of breakthrough methods to perfo...