Computationally Efficient Bootstrap Prediction Intervals for Returns and Volatilities in ARCH and GARCH Processes


Autoria(s): Chen, Bei; Gel, Yulia R; Balakrishna, N; Abraham, Bovas
Data(s)

11/04/2012

11/04/2012

01/01/2011

Resumo

We propose a novel, simple, efficient and distribution-free re-sampling technique for developing prediction intervals for returns and volatilities following ARCH/GARCH models. In particular, our key idea is to employ a Box–Jenkins linear representation of an ARCH/GARCH equation and then to adapt a sieve bootstrap procedure to the nonlinear GARCH framework. Our simulation studies indicate that the new re-sampling method provides sharp and well calibrated prediction intervals for both returns and volatilities while reducing computational costs by up to 100 times, compared to other available re-sampling techniques for ARCH/GARCH models. The proposed procedure is illustrated by an application to Yen/U.S. dollar daily exchange rate data.

Identificador

1099-131X

Journal of Forecasting . 30, 51–71 (2011)

http://dyuthi.cusat.ac.in/purl/2856

Idioma(s)

en

Publicador

John Wiley & Sons

Palavras-Chave #financial time series #volatility forecasting #bootstrap #non- Gaussian distribution
Tipo

Working Paper