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Bias‐corrected bootstrap prediction intervals for autoregressive model: new alternatives with applications to tourism forecasting
Authors:Jae H Kim  Haiyan Song  Kevin K F Wong
Institution:1. School of Economics and Finance, La Trobe University, Bundoora, Victoria, Australia;2. School of Hotel and Tourism Management, The Hong Kong Polytechnic University, Hong Kong
Abstract:This paper proposes the use of the bias‐corrected bootstrap for interval forecasting of an autoregressive time series with an arbitrary number of deterministic components. We use the bias‐corrected bootstrap based on two alternative bias‐correction methods: the bootstrap and an analytic formula based on asymptotic expansion. We also propose a new stationarity‐correction method, based on stable spectral factorization, as an alternative to Kilian's method exclusively used in past studies. A Monte Carlo experiment is conducted to compare small‐sample properties of prediction intervals. The results show that the bias‐corrected bootstrap prediction intervals proposed in this paper exhibit desirable small‐sample properties. It is also found that the bootstrap bias‐corrected prediction intervals based on stable spectral factorization are tighter and more stable than those based on Kilian's stationarity‐correction. The proposed methods are applied to interval forecasting for the number of tourist arrivals in Hong Kong. Copyright © 2010 John Wiley & Sons, Ltd.
Keywords:bias‐correction  stationarity‐correction  time series  tourist arrivals
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