AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criterial functions of observations are considered in statistical models with generalized sequences of observations. New necessary and sufficient conditions for consistency of these estimators are established. The applicability of these conditions is illustrated on regression models with Gaussian and contaminated observations and on models of exponentially distributed random processes and fields
The class of observation-driven models (ODMs) includes the GARCH(1, 1) model as well as integer-valu...
AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ...
A general framework for analyzing estimates in nonlinear time series is developed. General condition...
AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criter...
AbstractThe consistency and asymptotic linearity of recursive maximum likelihood estimator is proved...
This thesis is primarily concerned with the investigation of asymptotic properties of the maximum l...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
AbstractIn this note some problems of asymptotic inference in a class of non-stationary stochastic p...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
International audienceThis paper generalizes asymptotic properties obtained in the observation-drive...
The consistency of M-estimators in a very general setup is proven under weak assumptions. A one-dime...
This paper supplements the results of a new statistical approach to the problem of incomplete inform...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
The class of observation-driven models (ODMs) includes the GARCH(1, 1) model as well as integer-valu...
AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ...
A general framework for analyzing estimates in nonlinear time series is developed. General condition...
AbstractAsymptotically maximum likelihood estimators and estimators asymptotically minimizing criter...
AbstractThe consistency and asymptotic linearity of recursive maximum likelihood estimator is proved...
This thesis is primarily concerned with the investigation of asymptotic properties of the maximum l...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
AbstractIn this note some problems of asymptotic inference in a class of non-stationary stochastic p...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
International audienceThis paper generalizes asymptotic properties obtained in the observation-drive...
The consistency of M-estimators in a very general setup is proven under weak assumptions. A one-dime...
This paper supplements the results of a new statistical approach to the problem of incomplete inform...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
The class of observation-driven models (ODMs) includes the GARCH(1, 1) model as well as integer-valu...
AbstractSuppose on a probability space (Ω, F, P), a partially observable random process (xt, yt), t ...
A general framework for analyzing estimates in nonlinear time series is developed. General condition...