We introduce a flexible method to simultaneously infer both the drift and volatility functions of a discretely observed scalar diffusion. We introduce spline bases to represent these functions and develop a Markov chain Monte Carlo algorithm to infer, a posteriori, the coefficients of these functions in the spline basis. A key innovation is that we use spline bases to model transformed versions of the drift and volatility functions rather than the functions themselves. The output of the algorithm is a posterior sample of plausible drift and volatility functions that are not constrained to any particular parametric family. The flexibility of this approach provides practitioners a powerful investigative tool, allowing them to posit a variety ...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
A smoothing spline is considered to propose a novel model for the time-varying quantile of the univa...
We introduce a flexible method to simultaneously infer both the drift and volatility functions of a ...
A new Bayesian method is proposed for the analysis of discretely sampled diffusion processes. The me...
Speaking about splines we usually mean functions, that are piecewise polynomials and have appropriat...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
The smoothing spline is one of the most popular curve-fitting methods, partly because of empirical e...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We study Bayes procedures for the problem of nonparametric drift estimation for one-dimensional, erg...
For a multi-dimensional, partially observed diffusion process model with unknown drift and variable-...
Diffusion process models are widely used in science, engineering, and finance. Most diffusion proces...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
A smoothing spline is considered to propose a novel model for the time-varying quantile of the univa...
We introduce a flexible method to simultaneously infer both the drift and volatility functions of a ...
A new Bayesian method is proposed for the analysis of discretely sampled diffusion processes. The me...
Speaking about splines we usually mean functions, that are piecewise polynomials and have appropriat...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
The smoothing spline is one of the most popular curve-fitting methods, partly because of empirical e...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We study Bayes procedures for the problem of nonparametric drift estimation for one-dimensional, erg...
For a multi-dimensional, partially observed diffusion process model with unknown drift and variable-...
Diffusion process models are widely used in science, engineering, and finance. Most diffusion proces...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
A smoothing spline is considered to propose a novel model for the time-varying quantile of the univa...