AbstractThe usual assumption in the classical errors-in-variables problem of independent measurement errors cannot necessarily be maintained when the data are time series; errors may be strongly serially correlated, possibly containing seasonal effects and trends. When it is possible to identify frequency bands over which the signal-to-noise ratio is large, an approximate solution to the errors-in-variables problem is to omit the remaining frequencies from a time series regression. We draw attention to the danger of “leakage” from the omitted frequencies, and show that the consequent bias can be reduced by means of tapering
In this thesis we develop inferential methods for time series models with weakly dependent errors ...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
Abstract—In this paper, we study the consistency of a frequency-domain, errors-in-variables estimato...
Abstract. In this paper, we study the nonparametric estimation of the regression function for depend...
This article studies confidence intervals for regression parameters in time series settings. An equi...
The measurement error problem that we consider in this paper is concerned with the situation where t...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
It is well known that the presence of error in reported time series can distort estimates of relatio...
Frequently, seasonal and non-seasonal data (especially macro time series) are observed with noise. F...
The measurement error problem that we consider in this paper is concerned with the situation where t...
A simple technique for directly testing the parameters of a time series regression model for instabi...
Abstract: Using instrumental variable methods to estimate the parameters of dynamic errors-in-variab...
D.Phil.We propose solutions to two statistical problems using the frequency domain approach to time ...
^aThis article introduces two new types of prediction errors in time series: the filtered prediction...
In this thesis we develop inferential methods for time series models with weakly dependent errors ...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
Abstract—In this paper, we study the consistency of a frequency-domain, errors-in-variables estimato...
Abstract. In this paper, we study the nonparametric estimation of the regression function for depend...
This article studies confidence intervals for regression parameters in time series settings. An equi...
The measurement error problem that we consider in this paper is concerned with the situation where t...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
It is well known that the presence of error in reported time series can distort estimates of relatio...
Frequently, seasonal and non-seasonal data (especially macro time series) are observed with noise. F...
The measurement error problem that we consider in this paper is concerned with the situation where t...
A simple technique for directly testing the parameters of a time series regression model for instabi...
Abstract: Using instrumental variable methods to estimate the parameters of dynamic errors-in-variab...
D.Phil.We propose solutions to two statistical problems using the frequency domain approach to time ...
^aThis article introduces two new types of prediction errors in time series: the filtered prediction...
In this thesis we develop inferential methods for time series models with weakly dependent errors ...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
Abstract—In this paper, we study the consistency of a frequency-domain, errors-in-variables estimato...