In a multiple time series regression model the residuals are heteroskedastic and serially correlated of unknown form. GLS estimates of the regression coefficients using kernel regression and spectral methods are shown to be adaptive, in the sense of having the same asymptotic distribution, to the first order, as GLS estimates based on knowledge of the actual heteroskedasticity and serial correlation. A Monte Carlo experiment about the performance of our estimator is described
A recursive estimation method for time series models following generalized linear models is develope...
This article develops statistical methodology for semiparametric models for multiple time series of ...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
In a multiple time series regression model the residuals are heteroskedastic and serially correlated...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
In a time series regression model the residual autoregression function is an unknown, possibly non-l...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
Stable autoregressive models of known finite order are considered with martingale differences errors...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
In this paper, we present an adaptive estimator for panel data model with unknown unit-time varying ...
Summary. The article describes two kernel algorithms of the regression function estimation, that are...
A recursive estimation method for time series models following generalized linear models is develope...
This article develops statistical methodology for semiparametric models for multiple time series of ...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
In a multiple time series regression model the residuals are heteroskedastic and serially correlated...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
In a time series regression model the residual autoregression function is an unknown, possibly non-l...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
Stable autoregressive models of known finite order are considered with martingale differences errors...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
In this paper, we present an adaptive estimator for panel data model with unknown unit-time varying ...
Summary. The article describes two kernel algorithms of the regression function estimation, that are...
A recursive estimation method for time series models following generalized linear models is develope...
This article develops statistical methodology for semiparametric models for multiple time series of ...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...