We develop and implement a novel fast bootstrap for dependent data. Our scheme is based on the i.i.d. resampling of the smoothed moment indicators. We characterize the class of parametric and semi-parametric estimation problems for which the method is valid. We show the asymptotic refinements of the proposed procedure, proving that it is higher-order correct under mild assumptions on the time series, the estimating functions, and the smoothing kernel. We illustrate the applicability and the advantages of our procedure for Generalized Empirical Likelihood estimation. As a by-product, our fast bootstrap provides higher-order correct asymptotic confidence distributions. Monte Carlo simulations on an autoregressive conditional duration model pr...
This paper develops a bootstrap analogue of the well-known asymptotic expansion of the tail quantile...
We study a sieve bootstrap procedure for time series with a deterministic trend. The sieve for const...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
This thesis is composed in two parts. In the first chapter, we develop the theory of a novel fast bo...
In the context of functional estimation, the bootstrap approach amounts to substitution of the empir...
In this paper, we propose bootstrap methods for statistics evaluated on high frequency data such as ...
This paper establishes that the bootstrap provides asymptotic refinements for the generalized method...
This article unveils how the kernel block bootstrap method of Parente and Smith (2018a,2018b) can be...
In this paper a modified wild bootstrap method is presented to construct pointwise confidence interv...
We investigate the relative merits of a “moment-oriented” bootstrap method of Bunke (1997) in compar...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is an increasingly popular method for performing statistical inference. This paper pro...
Inference and testing in general point process models such as the Hawkes model is predominantly base...
It has been proved that direct bootstrapping of the nonparametric maximum likelihood estimator (MLE)...
This paper develops a bootstrap analogue of the well-known asymptotic expansion of the tail quantile...
We study a sieve bootstrap procedure for time series with a deterministic trend. The sieve for const...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
This thesis is composed in two parts. In the first chapter, we develop the theory of a novel fast bo...
In the context of functional estimation, the bootstrap approach amounts to substitution of the empir...
In this paper, we propose bootstrap methods for statistics evaluated on high frequency data such as ...
This paper establishes that the bootstrap provides asymptotic refinements for the generalized method...
This article unveils how the kernel block bootstrap method of Parente and Smith (2018a,2018b) can be...
In this paper a modified wild bootstrap method is presented to construct pointwise confidence interv...
We investigate the relative merits of a “moment-oriented” bootstrap method of Bunke (1997) in compar...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is an increasingly popular method for performing statistical inference. This paper pro...
Inference and testing in general point process models such as the Hawkes model is predominantly base...
It has been proved that direct bootstrapping of the nonparametric maximum likelihood estimator (MLE)...
This paper develops a bootstrap analogue of the well-known asymptotic expansion of the tail quantile...
We study a sieve bootstrap procedure for time series with a deterministic trend. The sieve for const...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...