In this thesis we develop inferential methods for time series models with weakly dependent errors in the following three aspects. The first aspect concerns the issue of the size-distortion in the presence of strong temporal dependence, which is well-known in the literature. There are recently proposed bandwidth-free methods, which generally reduces the size-distortion compared to the traditional method. However, these methods still suffer from severe size distortion when the temporal dependence in the error process is strong. We propose to use the prewhitening to handle the strong temporal dependence so that the size distortion is greatly reduced in the presence of strong temporal dependence in the error. This work is presented as Chapter...
This paper summarizes recent developments in non- and semiparametric regres- sion with stationary fr...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
In this thesis we develop inferential methods for time series models with weakly dependent errors ...
© 2015 American Statistical Association Journal of Business & Economic Statistics. Motivated by th...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
An important problem in time series analysis is the discrimination between non-stationarity and long...
A linear regression model with errors following a time-varying process is considered.In this class o...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
This paper provides a robust statistical approach to nonstationary time series regression and infere...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
Spectral analysis of strongly dependent time series data has a long history in applications in a var...
Causal inference uses observations to infer the causal structure of the data generating system. We s...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
This paper summarizes recent developments in non- and semiparametric regres-sion with stationary fra...
This paper summarizes recent developments in non- and semiparametric regres- sion with stationary fr...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
In this thesis we develop inferential methods for time series models with weakly dependent errors ...
© 2015 American Statistical Association Journal of Business & Economic Statistics. Motivated by th...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
An important problem in time series analysis is the discrimination between non-stationarity and long...
A linear regression model with errors following a time-varying process is considered.In this class o...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
This paper provides a robust statistical approach to nonstationary time series regression and infere...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
Spectral analysis of strongly dependent time series data has a long history in applications in a var...
Causal inference uses observations to infer the causal structure of the data generating system. We s...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
This paper summarizes recent developments in non- and semiparametric regres-sion with stationary fra...
This paper summarizes recent developments in non- and semiparametric regres- sion with stationary fr...
We investigate the estimation methods of the multivariate non-stationary errors-in-variables models ...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...