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This paper is devoted to the study of some asymptotic properties of a -estimator in a framework of detection of abrupt changes in random field’s distribution. This class of problems includes e.g. recovery of sets. It involves various techniques, including -estimation method, concentration inequalities, maximal inequalities for dependent random variables and -mixing. Penalization of the criterion function when the size of the true model is unknown is performed. All the results apply under mild,...
This paper is devoted to the study of some asymptotic properties of a
M-estimator in a framework of detection of abrupt changes in
random field's distribution. This class of problems includes e.g.
recovery of sets. It involves various
techniques, including M-estimation method, concentration
inequalities, maximal inequalities for dependent random variables and
ϕ-mixing. Penalization of the criterion function when the size of the
true model is
unknown is performed. All the results apply under...
The purpose of this paper is to investigate the deviation inequalities and the moderate deviation principle of the least squares estimators of the unknown parameters of general th-order asymmetric bifurcating autoregressive processes, under suitable assumptions on the driven noise of the process. Our investigation relies on the moderate deviation principle for martingales.
We consider a diffusion process which is observed at times for , each observation being subject to a measurement error. All errors are independent and centered gaussian with known variance . There is an unknown parameter within the diffusion coefficient, to be estimated. In this first paper the case when is indeed a gaussian martingale is examined: we can prove that the LAN property holds under quite weak smoothness assumptions, with an explicit limiting Fisher information. What is perhaps...
We consider a diffusion process X which is observed at times i/n
for i = 0,1,...,n, each observation being subject to a measurement
error. All errors are independent and centered Gaussian with known
variance pn. There is an unknown parameter within the diffusion
coefficient, to be estimated. In this first paper the
case when X is indeed a Gaussian martingale is examined: we can prove
that the LAN property holds under quite weak smoothness assumptions,
with an explicit limiting Fisher information....
We consider a diffusion process which is observed at times for , each observation being subject to a measurement error. All errors are independent and centered gaussian with known variance . There is an unknown parameter to estimate within the diffusion coefficient. In this second paper we construct estimators which are asymptotically optimal when the process is a gaussian martingale, and we conjecture that they are also optimal in the general case.
We consider a diffusion process X which is observed at times i/n
for i = 0,1,...,n, each observation being subject to a measurement
error. All errors are independent and centered Gaussian with known
variance pn. There is an unknown parameter to estimate within the
diffusion coefficient. In this second paper we
construct estimators which are asymptotically optimal when the
process X is a Gaussian martingale, and we conjecture that they are
also optimal in the general case.
Let (Xt) be a diffusion on the interval (l,r) and Δn
a sequence of positive numbers tending to zero. We define Ji as the integral
between iΔn and (i + 1)Δn of Xs.
We give an approximation of the law of (J0,...,Jn-1)
by means of a Euler scheme expansion for the process (Ji).
In some special cases, an approximation by an
explicit Gaussian ARMA(1,1) process is obtained.
When Δn = n-1 we deduce from this expansion estimators
of the diffusion coefficient of X based on (Ji). These estimators
are shown...
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