International audienceThe behaviour of the LS estimator in a nonlinear regression model is investigated, when both the regressors and the errors are long memory processes. The convergence rate, the asymptotic distribution of the LS estimator depend on long memory parameters, Hermite ranks and on expectation of the partial derivative with respect to the parameter of the regression function. We show that the asymptotic distribution of this estimator can be non-normal. An application of these results is presented for testing a structural change in a model with change-point. Numerical simulations confirm the theoretical results
The thesis introduces new nonlinear models with long memory which can be used for modelling of financ...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
[[abstract]]We develop an asymptotic theory for the first two sample moments of a stationary multiva...
International audienceThe behaviour of the LS estimator in a nonlinear regression model is investiga...
In this paper we considers the asymptotic distribution of S-estimators in the nonlinear regression m...
We consider asymptotic expansion of the nonparametric M-estimator in a fixed-design nonlinear regres...
We investigate the behaviour of S-estimators in the linear regression model, when the error terms ar...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
[[abstract]]For a time series generated by polynomial trend with stationary long-memory errors, the ...
The asymptotic properties of the least squares estimator are derived for a non regular nonlinear mod...
In this paper we examine the asymptotic properties of the estimator of the long-run coefficient (LRC...
The fixed design regression model with long-memory errors is considered. The finite-dimensional asym...
This paper establishes consistency and asymptotic distribution theory for the least squares estimate...
This paper obtains asymptotic representations of a class of L-estimators in a linear regression mode...
In this paper we examine the asymptotic properties of the estima-tor of the long-run coefficient (LR...
The thesis introduces new nonlinear models with long memory which can be used for modelling of financ...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
[[abstract]]We develop an asymptotic theory for the first two sample moments of a stationary multiva...
International audienceThe behaviour of the LS estimator in a nonlinear regression model is investiga...
In this paper we considers the asymptotic distribution of S-estimators in the nonlinear regression m...
We consider asymptotic expansion of the nonparametric M-estimator in a fixed-design nonlinear regres...
We investigate the behaviour of S-estimators in the linear regression model, when the error terms ar...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
[[abstract]]For a time series generated by polynomial trend with stationary long-memory errors, the ...
The asymptotic properties of the least squares estimator are derived for a non regular nonlinear mod...
In this paper we examine the asymptotic properties of the estimator of the long-run coefficient (LRC...
The fixed design regression model with long-memory errors is considered. The finite-dimensional asym...
This paper establishes consistency and asymptotic distribution theory for the least squares estimate...
This paper obtains asymptotic representations of a class of L-estimators in a linear regression mode...
In this paper we examine the asymptotic properties of the estima-tor of the long-run coefficient (LR...
The thesis introduces new nonlinear models with long memory which can be used for modelling of financ...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
[[abstract]]We develop an asymptotic theory for the first two sample moments of a stationary multiva...