This paper is concerned with the application of jackknife methods as a means of bias reduction in the estimation of autoregressive models with a unit root. It is shown that the usual jackknife estimator based on non-overlapping sub-samples does not remove fully the first-order bias as intended, but that an ‘optimal’ jackknife estimator can be de- fined that is capable of removing this bias. The results are based on a demonstration that the sub-sample estimators converge to different limiting distributions, and the joint moment generating function of the numerator and denominator of these distributions (which are func- tionals of a Wiener process over a sub-interval of [0,1]) is derived and utilised to extract the optimal weights. Simulation...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
This paper investigates the performance of a jackknife correction to a test for cointegration rank i...
Maximum-likelihood estimation of nonlinear models with fixed effects is subject to the incidental-pa...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper explores the properties of jackknife methods of estimation in stationary autoregressive m...
Includes bibliographical references.Many important estimators in statistics have the property that t...
This thesis consists of three essays on the subject of autoregressive time series of order one. T...
We use the jackknife to bias correct the log-periodogram regression (LPR) estimator of the fractiona...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
This paper investigates the performance of a jackknife correction to a test for cointegration rank i...
Maximum-likelihood estimation of nonlinear models with fixed effects is subject to the incidental-pa...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
This paper explores the properties of jackknife methods of estimation in stationary autoregressive m...
Includes bibliographical references.Many important estimators in statistics have the property that t...
This thesis consists of three essays on the subject of autoregressive time series of order one. T...
We use the jackknife to bias correct the log-periodogram regression (LPR) estimator of the fractiona...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
This paper investigates the performance of a jackknife correction to a test for cointegration rank i...
Maximum-likelihood estimation of nonlinear models with fixed effects is subject to the incidental-pa...