In this study, an ordered non-overlapping block bootstrap procedure has been proposed to obtain multi-step forecast regions for unrestricted vector autoregressive models. The proposed method is not based on either backward or forward representations, so it can be implemented to VARMA or VAR-GARCH models. Also, it is computationally more efficient than the existing techniques. Its finite sample performance is investigated by Monte Carlo experiments and two-real world examples. Our findings show that the proposed method is a good alternative to the available resampling methods and produces better results for long-term forecasting when the model is near non-stationary or near-cointegrated
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiva...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiva...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we establish the asymptotic validity and analyse the finite sample performance of a s...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this paper, we show how to simplify the construction of bootstrap prediction densities in multiv...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...