The recent advent of modern technology has generated a large number of datasets which can be frequently modeled as functional data. This paper focuses on the problem of multiclass classification for stochastic diffusion paths. In this context we establish a closed formula for the optimal Bayes rule. We provide new statistical procedures which are built either on the plug-in principle or on the empirical risk minimization principle. We show the consistency of these procedures under mild conditions. We apply our methodologies to the parametric case and illustrate their accuracy with a simulation study through examples
This thesis consists of five papers (Paper A-E) on statistical modeling of diffusion processes. Two ...
Some optimal inference results for a class of diffusion processes, including the continuous state br...
Abstract. Several different methods exist for efficient approximation of paths in multiscale stochas...
The recent advent of modern technology has generated a large number of datasets which can be frequen...
We propose simple methods for multivariate diffusion bridge simulation, which plays a fundamental ro...
With a view to likelihood inference for discretely observed diffusion type models, we propose a simp...
: A new type of martingale estimating function is proposed for inference about classes of diffusion ...
In this paper we introduce decompositions of diffusion measure which are used to construct an algori...
Estimation of parameters of a diffusion based on discrete time observations poses a difficult proble...
In the field of first-return statistics in bounded domains, short paths may be defined as those path...
This work consists of two separate parts. In the first part we extend the work on exact simulation o...
In this paper we review recently developed methods for nonparametric Bayesian inference for one-dime...
Abstract. Several different methods exist for efficient approximation of paths in multiscale stochas...
Let be the unknown parameter in the drift coefficient of a diffusion process described by a linear h...
A new distance to classify time series is proposed. The underlying generating process is assumed to ...
This thesis consists of five papers (Paper A-E) on statistical modeling of diffusion processes. Two ...
Some optimal inference results for a class of diffusion processes, including the continuous state br...
Abstract. Several different methods exist for efficient approximation of paths in multiscale stochas...
The recent advent of modern technology has generated a large number of datasets which can be frequen...
We propose simple methods for multivariate diffusion bridge simulation, which plays a fundamental ro...
With a view to likelihood inference for discretely observed diffusion type models, we propose a simp...
: A new type of martingale estimating function is proposed for inference about classes of diffusion ...
In this paper we introduce decompositions of diffusion measure which are used to construct an algori...
Estimation of parameters of a diffusion based on discrete time observations poses a difficult proble...
In the field of first-return statistics in bounded domains, short paths may be defined as those path...
This work consists of two separate parts. In the first part we extend the work on exact simulation o...
In this paper we review recently developed methods for nonparametric Bayesian inference for one-dime...
Abstract. Several different methods exist for efficient approximation of paths in multiscale stochas...
Let be the unknown parameter in the drift coefficient of a diffusion process described by a linear h...
A new distance to classify time series is proposed. The underlying generating process is assumed to ...
This thesis consists of five papers (Paper A-E) on statistical modeling of diffusion processes. Two ...
Some optimal inference results for a class of diffusion processes, including the continuous state br...
Abstract. Several different methods exist for efficient approximation of paths in multiscale stochas...