This paper proposes a new class of heteroskedastic and autocorrelation consistent (HAC) covariance matrix estimators. The standard HAC estimation method reweights estimators of the autocovariances. Here we initially smooth the data observations themselves using kernel function–based weights. The resultant HAC covariance matrix estimator is the normalized outer product of the smoothed random vectors and is therefore automatically positive semidefinite. A corresponding efficient GMM criterion may also be defined as a quadratic form in the smoothed moment indicators whose normalized minimand provides a test statistic for the overidentifying moment conditions
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Data described by econometric models typically contains autocorrelation and/or het-eroskedasticity o...
This introduction to the R package sandwich is a (slightly) modified version of Zeileis (2004), publ...
This paper proposes a new class of HAC covariance matrix estimators. The standard HAC estimation met...
This paper considers a new class of heteroskedasticity and autocorrelation consistent (HAC) covarian...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
This paper is concerned with the estimation of covariance matrices in the presence of heteroskedasti...
A new class of HAC covariance matrix estimators is proposed based on the notion of a flat-top kernel...
Data described by econometric models typically contains autocorrelation and/or heteroskedasticity of...
The heteroskedasticity-consistent covariance matrix estimator proposed by White (1980), also known a...
This introduction to the R package sandwich is a (slightly) modified version of Zeileis (2004a), pub...
This paper considers the algorithmic implementation of the heteroskedasticity and autocorrelation co...
AbstractThis note proposes a class of estimators for estimating the asymptotic covariance matrix of ...
Data described by econometric models typically contains autocorrelation and/or heteroskedasticity of...
This paper proposes a new approach to testing in the generalized method of moments (GMM) framework. ...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Data described by econometric models typically contains autocorrelation and/or het-eroskedasticity o...
This introduction to the R package sandwich is a (slightly) modified version of Zeileis (2004), publ...
This paper proposes a new class of HAC covariance matrix estimators. The standard HAC estimation met...
This paper considers a new class of heteroskedasticity and autocorrelation consistent (HAC) covarian...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
This paper is concerned with the estimation of covariance matrices in the presence of heteroskedasti...
A new class of HAC covariance matrix estimators is proposed based on the notion of a flat-top kernel...
Data described by econometric models typically contains autocorrelation and/or heteroskedasticity of...
The heteroskedasticity-consistent covariance matrix estimator proposed by White (1980), also known a...
This introduction to the R package sandwich is a (slightly) modified version of Zeileis (2004a), pub...
This paper considers the algorithmic implementation of the heteroskedasticity and autocorrelation co...
AbstractThis note proposes a class of estimators for estimating the asymptotic covariance matrix of ...
Data described by econometric models typically contains autocorrelation and/or heteroskedasticity of...
This paper proposes a new approach to testing in the generalized method of moments (GMM) framework. ...
Smoothed nonparametric estimates of the spectral density matrix at zero frequency have been widely u...
Data described by econometric models typically contains autocorrelation and/or het-eroskedasticity o...
This introduction to the R package sandwich is a (slightly) modified version of Zeileis (2004), publ...