We present a novel approach to inference in conditionally Gaussian continuous time stochastic processes, where the latent process is a Markovian jump process. We first consider the case of jump-diffusion processes, where the drift of a linear stochastic differential equation can jump at arbitrary time points. We derive partial differential equations for exact inference and present a very efficient mean field approximation. By introducing a novel lower bound on the free energy, we then generalise our approach to Gaussian processes with arbitrary covariance, such as the non-Markovian RBF covariance. We present results on both simulated and real data, showing that the approach is very accurate in capturing latent dynamics and can be useful in ...
This paper shows how to solve and estimate a continuous-time dynamic stochastic general equilibrium ...
In this thesis we consider the relationship between jump-diffusion processes and ARCH models with ju...
International audienceWe discuss the use of a continuous-time jump Markov process as the driving pro...
Switching dynamical systems provide a powerful, interpretable modeling framework for inference in ti...
Switching dynamical systems are an expressive model class for the analysis of time-series data. As i...
2012-07-25The objective of this thesis is to study statistical inference of first and second order o...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
We introduce a nonparametric approach for estimating drift functions in systems of stochastic differ...
This article proposes anew approach to exploit the information in high-frequency data for the statis...
Markov jump processes are continuous-time stochastic processes widely used in a variety of applied d...
In this paper we consider the problem of parameter inference for Markov jump process (MJP) represent...
This paper is concerned with parametric inference for a stochastic differential equation driven by a...
This thesis considers the problem of likelihood- based parameter estimation for time-homogeneous jum...
Amongst various mathematical frameworks, multidimensional continuous-time Markov jump processes (Zt ...
The topic of this thesis is the study of approximation schemes of jump processes whose driving noise...
This paper shows how to solve and estimate a continuous-time dynamic stochastic general equilibrium ...
In this thesis we consider the relationship between jump-diffusion processes and ARCH models with ju...
International audienceWe discuss the use of a continuous-time jump Markov process as the driving pro...
Switching dynamical systems provide a powerful, interpretable modeling framework for inference in ti...
Switching dynamical systems are an expressive model class for the analysis of time-series data. As i...
2012-07-25The objective of this thesis is to study statistical inference of first and second order o...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
We introduce a nonparametric approach for estimating drift functions in systems of stochastic differ...
This article proposes anew approach to exploit the information in high-frequency data for the statis...
Markov jump processes are continuous-time stochastic processes widely used in a variety of applied d...
In this paper we consider the problem of parameter inference for Markov jump process (MJP) represent...
This paper is concerned with parametric inference for a stochastic differential equation driven by a...
This thesis considers the problem of likelihood- based parameter estimation for time-homogeneous jum...
Amongst various mathematical frameworks, multidimensional continuous-time Markov jump processes (Zt ...
The topic of this thesis is the study of approximation schemes of jump processes whose driving noise...
This paper shows how to solve and estimate a continuous-time dynamic stochastic general equilibrium ...
In this thesis we consider the relationship between jump-diffusion processes and ARCH models with ju...
International audienceWe discuss the use of a continuous-time jump Markov process as the driving pro...