AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a generalisation of the functional least-squares procedure. This leads to a family of estimators, indexed by a vector parameter, for which strong uniform consistency and weak convergence results are established. The structure of the limiting covariance matrix is explored and an adaptive estimator with an appropriately “small” covariance matrix is proposed. This estimator is asymptotically normally distributed and it is claimed that its use is particularly appropriate for models with long-tailed and possibly asymmetric error distributions
This paper considers the least squares estimation and establishes its asymptotic theory for threshol...
AbstractA new approach of estimating parameters in multivariate models is introduced. A fitting func...
A new approach of estimating parameters in multivariate models is introduced. A fitting function wil...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
AbstractThis paper focuses on the convergence properties of the least squares parameter estimation a...
AbstractIn this paper, we introduce a functional semiparametric model, where a real-valued random va...
International audienceIn this paper, we introduce a functional semiparametric model, where a real-va...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
The derivation of the asymptotic normality LSE's under univariate non-linear regression models is pr...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
AbstractThis paper deals with maximum likelihood estimation of linear or nonlinear functional relati...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
A vector autoregression with deterministic terms with no restrictions to its characteristic roots is...
This paper considers the least squares estimation and establishes its asymptotic theory for threshol...
AbstractA new approach of estimating parameters in multivariate models is introduced. A fitting func...
A new approach of estimating parameters in multivariate models is introduced. A fitting function wil...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
AbstractThis paper focuses on the convergence properties of the least squares parameter estimation a...
AbstractIn this paper, we introduce a functional semiparametric model, where a real-valued random va...
International audienceIn this paper, we introduce a functional semiparametric model, where a real-va...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
The derivation of the asymptotic normality LSE's under univariate non-linear regression models is pr...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
AbstractThis paper deals with maximum likelihood estimation of linear or nonlinear functional relati...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
A vector autoregression with deterministic terms with no restrictions to its characteristic roots is...
This paper considers the least squares estimation and establishes its asymptotic theory for threshol...
AbstractA new approach of estimating parameters in multivariate models is introduced. A fitting func...
A new approach of estimating parameters in multivariate models is introduced. A fitting function wil...