The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap scheme, the NN-sieve bootstrap. This procedure, which retains the conceptual simplicity of the classical residual bootstrap, delivers consistent results for quite general nonlinear processes. In this paper, we consider stochastic volatility models for financial time series of the nonlinear autoregressive-ARCH type and, in this context, we prove the consistency of the conditional quantile function estimator and we derive its asymptotic distribution. The proposed procedure is also evaluated through a small Monte Carlo study. The results confirm that the bootstrap quantile estimators converge, in some sense, to a Normal distribution. Moreover thei...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
The aim of this paper is to construct bootstrap inference for VaR using a nonparametric bootstrap sc...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper focuses on the inference of suitable generally non linear functions in stochastic volatil...
This paper proposes a fixed-design residual bootstrap method for the two-step estimator of Francq an...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...