In this paper, we adapt sufficient and ordered non-overlapping block bootsrap methods into jackknife-after-bootstrap (JaB) algorithm to estimate the standard error of a statistic where observations form a stationary sequence. We also extend the JaB algorithm to obtain prediction intervals for future returns and volatilities of GARCH processes. The finite sample properties of the proposed methods are illustrated by an extensive simulation study and they are applied to S&P 500 stock index data. Our findings reveal that the proposed algorithm often exhibits improved performance and, is computationally more efficient compared to conventional JaB method
It is common in parametric bootstrap to select the model from the data, and then treat as if it were...
Estimation in extreme financial risk is often faced with challenges such as the need for adequate di...
A new bootstrap procedure to obtain prediction densities of returns and volatilities of GARCH proces...
In this paper, we adapt sufficient and ordered non-overlapping block bootsrap methods into jackknife...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
AbstractB. Efron introducedjackknife-after-bootstrapas a computationally efficient method for estima...
In this paper, we propose a new bootstrap algorithm to obtain prediction intervals for generalized a...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
In this study, we propose sufficient time series bootstrap methods that achieve better results than ...
We propose a novel, simple, efficient and distribution-free re-sampling technique for developing pre...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This article introduces a resampling procedure called the stationary bootstrap as a means of calcula...
SUMMARY The block bootstrap for time series consists in randomly resampling blocks of consecutive v...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
We introduce block bootstrap techniques that are (first order) valid in recursive estimation framewo...
It is common in parametric bootstrap to select the model from the data, and then treat as if it were...
Estimation in extreme financial risk is often faced with challenges such as the need for adequate di...
A new bootstrap procedure to obtain prediction densities of returns and volatilities of GARCH proces...
In this paper, we adapt sufficient and ordered non-overlapping block bootsrap methods into jackknife...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
AbstractB. Efron introducedjackknife-after-bootstrapas a computationally efficient method for estima...
In this paper, we propose a new bootstrap algorithm to obtain prediction intervals for generalized a...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
In this study, we propose sufficient time series bootstrap methods that achieve better results than ...
We propose a novel, simple, efficient and distribution-free re-sampling technique for developing pre...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This article introduces a resampling procedure called the stationary bootstrap as a means of calcula...
SUMMARY The block bootstrap for time series consists in randomly resampling blocks of consecutive v...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
We introduce block bootstrap techniques that are (first order) valid in recursive estimation framewo...
It is common in parametric bootstrap to select the model from the data, and then treat as if it were...
Estimation in extreme financial risk is often faced with challenges such as the need for adequate di...
A new bootstrap procedure to obtain prediction densities of returns and volatilities of GARCH proces...