Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely used in econometric inference, because they can consistently estimate the covariance matrix of a partial sum of a possibly dependent vector process. When elements of the vector process exhibit long memory or antipersistence such estimates are inconsistent. We propose estimates which are still consistent in such circumstances, adapting automatically to memory parameters that can vary across the vector and be unknown.
This paper considers the algorithmic implementation of the heteroskedasticity and autocorrelation co...
This paper proposes a new class of heteroskedastic and autocorrelation consistent (HAC) covariance m...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
This paper deals with the estimation of the long-run variance of a stationary sequence. We extend th...
This paper analyzes the performance of heteroskedasticity-and-autocorrelation-consistent (HAC) covar...
We propose computing HAC covariance matrix estimators based on one-step-ahead forecasting errors. It...
In a number of econometric models, rules of large-sample inference require a consistent estimate of ...
In a number of econometric models, rules of large-sample inference require a consistent estimate of ...
This paper considers the algorithmic implementation of the heteroskedasticity and autocorrelation co...
This paper proposes a new class of heteroskedastic and autocorrelation consistent (HAC) covariance m...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
This paper deals with the estimation of the long-run variance of a stationary sequence. We extend th...
This paper analyzes the performance of heteroskedasticity-and-autocorrelation-consistent (HAC) covar...
We propose computing HAC covariance matrix estimators based on one-step-ahead forecasting errors. It...
In a number of econometric models, rules of large-sample inference require a consistent estimate of ...
In a number of econometric models, rules of large-sample inference require a consistent estimate of ...
This paper considers the algorithmic implementation of the heteroskedasticity and autocorrelation co...
This paper proposes a new class of heteroskedastic and autocorrelation consistent (HAC) covariance m...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...