A new distance to classify time series is proposed. The underlying generating process is assumed to be a diffusion process solution to stochastic differential equations and observed at discrete times. The mesh of observations is not required to shrink to zero. The new dissimilarity measure is based on the L1 distance between the Markov operators estimated on two observed paths. Simulation experiments are used to analyze the performance of the proposed distance under several conditions including perturbation and misspecification. As an example, real financial data from NYSE/NASDAQ stocks are analyzed and evidence is provided that the new distance seems capable to catch differences in both the drift and diffusion coefficients better than othe...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
Important and necessary changes have been made in this new version, this version supersedes version ...
In this paper we investigate distance functions on finite state Markov processes that measure the be...
A new distance to classify time series is proposed. The underlying generating process is assumed to ...
We present an approach to model selection for a time series of data on a fine time scale. The underl...
Recently, a large number of research teams from around the world collaborated in the so-called 'anom...
© Springer-Verlag Berlin Heidelberg 2013. All rights are reserved. Diffusion processes are a pr...
21 pages.This paper establishes the global asymptotic equivalence, in the sense of the Le Cam $\Delt...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
Suppose one observes one path of a stochastic process X = (Xt)t ≥ 0 which is known to solve an equat...
International audienceWe study inference on continuous-time processes from discrete data with a give...
We consider a model of small diffusion type where the function which governs the drift term varies i...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
We consider a model of small diffusion type where the function which governs the drift term varies i...
Two measures of the distance between two stochastic processes are the divergence and the Bhattachary...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
Important and necessary changes have been made in this new version, this version supersedes version ...
In this paper we investigate distance functions on finite state Markov processes that measure the be...
A new distance to classify time series is proposed. The underlying generating process is assumed to ...
We present an approach to model selection for a time series of data on a fine time scale. The underl...
Recently, a large number of research teams from around the world collaborated in the so-called 'anom...
© Springer-Verlag Berlin Heidelberg 2013. All rights are reserved. Diffusion processes are a pr...
21 pages.This paper establishes the global asymptotic equivalence, in the sense of the Le Cam $\Delt...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
Suppose one observes one path of a stochastic process X = (Xt)t ≥ 0 which is known to solve an equat...
International audienceWe study inference on continuous-time processes from discrete data with a give...
We consider a model of small diffusion type where the function which governs the drift term varies i...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
We consider a model of small diffusion type where the function which governs the drift term varies i...
Two measures of the distance between two stochastic processes are the divergence and the Bhattachary...
In this PhD. Thesis we focus on diffusion models. Diffusions are very attractive and widely applied ...
Important and necessary changes have been made in this new version, this version supersedes version ...
In this paper we investigate distance functions on finite state Markov processes that measure the be...