Asymptotic bootstrap validity is usually understood as consistency of the distribution of a bootstrap statistic, conditional on the data, for the unconditional limit distribution of a statistic of interest. From this perspective, randomness of the limit bootstrap measure is regarded as a failure of the bootstrap. We show that such limiting randomness does not necessarily invalidate bootstrap inference if validity is understood as control over the frequency of correct inferences in large samples. We first establish sufficient conditions for asymptotic bootstrap validity in cases where the unconditional limit distribution of a statistic can be obtained by averaging a (random) limiting bootstrap distribution. Further, we provide results ensuri...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
Asymptotic bootstrap validity is usually understood as consistency of the distribution of a bootstra...
This is the final version. Available on open access from via the DOI in this recordAsymptotic bootst...
We consider bootstrap inference for estimators which are (asymptotically) biased. We show that, even...
In this paper we investigate to what extent the bootstrap can be applied to conditionalmean models, ...
In this paper we investigate to what extent the bootstrap can be applied to conditionalmean models, ...
This is the author accepted manuscript. The final version is available from Oxford University Press ...
While often simple to implement in practice, application of the bootstrap in econometric modeling o...
While often simple to implement in practice, application of the bootstrap in econometric modeling o...
In this article, we discuss the bootstrap as a tool for statistical inference in econometric time se...
In this article, we discuss the bootstrap as a tool for statistical inference in econometric time se...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
Bootstrap, introduced by Efron (1979), is a general method of estimating the distribution Gn of a fu...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
Asymptotic bootstrap validity is usually understood as consistency of the distribution of a bootstra...
This is the final version. Available on open access from via the DOI in this recordAsymptotic bootst...
We consider bootstrap inference for estimators which are (asymptotically) biased. We show that, even...
In this paper we investigate to what extent the bootstrap can be applied to conditionalmean models, ...
In this paper we investigate to what extent the bootstrap can be applied to conditionalmean models, ...
This is the author accepted manuscript. The final version is available from Oxford University Press ...
While often simple to implement in practice, application of the bootstrap in econometric modeling o...
While often simple to implement in practice, application of the bootstrap in econometric modeling o...
In this article, we discuss the bootstrap as a tool for statistical inference in econometric time se...
In this article, we discuss the bootstrap as a tool for statistical inference in econometric time se...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
Bootstrap, introduced by Efron (1979), is a general method of estimating the distribution Gn of a fu...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...