A system of multivariate semiparametric nonlinear time series models is studied with possible dependence structures and nonstationarities in the parametric and nonparametric components. The parametric regressors may be endogenous while the nonparametric regressors are assumed to be strictly exogenous. The parametric regressors may be stationary or nonstationary and the nonparametric regressors are nonstationary integrated time series. Semiparametric least squares (SLS) estimation is considered and its asymptotic properties are derived. Due to endogeneity in the parametric regressors, SLS is not consistent for the parametric component and a semiparametric instrumental variable (SIV) method is proposed instead. Under certain regularity condit...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
A dynamic factor model is proposed for the analysis of multivariate nonstationary time series in the...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...
A system of multivariate semiparametric nonlinear time series models is studied with possible depend...
A system of vector semiparametric nonlinear time series models is studied with possible dependence s...
This paper studies a general class of nonlinear varying coefficient time series mod-els with possibl...
This thesis studies nonparametric estimation techniques for a general regression set–up under very w...
This paper provides a robust statistical approach to nonstationary time series regression and infere...
Nonlinear time series models have been used extensively in recent years to model complex dynamics th...
This article studies nonparametric estimation of a regression model for d ≥ 2 potentially non- stati...
We study a semi-varying coefficient model where the regressors are generated by the multivariate uni...
This thesis aims to propose better models to deal with non-stationary time series since they pose a ...
This note is concerned with nonparanetric and semiparametric inference in regression models where re...
This thesis proposes and justifies parameter estimates in two semiparametric models for economic tim...
Dans cette thèse, on s'intéresse aux propriétés probabilistes et statistiques de modèles de séries t...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
A dynamic factor model is proposed for the analysis of multivariate nonstationary time series in the...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...
A system of multivariate semiparametric nonlinear time series models is studied with possible depend...
A system of vector semiparametric nonlinear time series models is studied with possible dependence s...
This paper studies a general class of nonlinear varying coefficient time series mod-els with possibl...
This thesis studies nonparametric estimation techniques for a general regression set–up under very w...
This paper provides a robust statistical approach to nonstationary time series regression and infere...
Nonlinear time series models have been used extensively in recent years to model complex dynamics th...
This article studies nonparametric estimation of a regression model for d ≥ 2 potentially non- stati...
We study a semi-varying coefficient model where the regressors are generated by the multivariate uni...
This thesis aims to propose better models to deal with non-stationary time series since they pose a ...
This note is concerned with nonparanetric and semiparametric inference in regression models where re...
This thesis proposes and justifies parameter estimates in two semiparametric models for economic tim...
Dans cette thèse, on s'intéresse aux propriétés probabilistes et statistiques de modèles de séries t...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
A dynamic factor model is proposed for the analysis of multivariate nonstationary time series in the...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...