This paper discusses the finite sample bias of analogue bounds under the monotone instrumental variables assumption. By analyzing the bias function, we first propose a conservative estimator which is biased downwards (upwards) when the analogue estimator is biased upwards (downwards). Using the bias function, we then show the mechanism of the parametric bootstrap correction procedure, which can reduce but not eliminate the bias, and there is also a possibility of overcorrection.This motivates us to propose a simultaneous multi-level bootstrap procedure so as to further correct the remaining bias. The procedure is justified under the assumption that the bias function can be well approximated by a polynomial. Our multi-level bootstrap algorit...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
The ability of six alternative bootstrap methods to reduce the bias of GMM parameter estimates is ex...
Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not...
This paper discusses the finite sample bias of analogue bounds under the monotone instrumental varia...
We propose a computationally efficient approximation for the double bootstrap bias adjustment factor...
We consider bootstrap inference for estimators which are (asymptotically) biased. We show that, even...
Sampling variations complicate the classical inference on the analogue bounds under the monotone in...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
The paper deals with the problem, how many bootstrap replications have to be done at estimation of b...
In this paper we investigate bootstrap-based methods for bias-correcting the first-stage parameter e...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
This paper studies robustness of bootstrap inference methods for instrumental variable (IV) regressi...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
The ability of six alternative bootstrap methods to reduce the bias of GMM parameter estimates is ex...
Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not...
This paper discusses the finite sample bias of analogue bounds under the monotone instrumental varia...
We propose a computationally efficient approximation for the double bootstrap bias adjustment factor...
We consider bootstrap inference for estimators which are (asymptotically) biased. We show that, even...
Sampling variations complicate the classical inference on the analogue bounds under the monotone in...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
The paper deals with the problem, how many bootstrap replications have to be done at estimation of b...
In this paper we investigate bootstrap-based methods for bias-correcting the first-stage parameter e...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
This paper studies robustness of bootstrap inference methods for instrumental variable (IV) regressi...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
The ability of six alternative bootstrap methods to reduce the bias of GMM parameter estimates is ex...
Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not...