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Guaranteed-content prediction intervals for non-linear autoregressions

โœ Scribed by Xavier de Luna


Publisher
John Wiley and Sons
Year
2001
Tongue
English
Weight
97 KB
Volume
20
Category
Article
ISSN
0277-6693

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โœฆ Synopsis


Abstract

In this paper we present guaranteedโ€content prediction intervals for time series data. These intervals are such that their content (or coverage) is guaranteed with a given high probability. They are thus more relevant for the observed time series at hand than classical prediction intervals, whose content is guaranteed merely on average over hypothetical repetitions of the prediction process. This type of prediction inference has, however, been ignored in the time series context because of a lack of results. This gap is filled by deriving asymptotic results for a general family of autoregressive models, thereby extending existing results in nonโ€linear regression. The actual construction of guaranteedโ€content prediction intervals directly follows from this theory. Simulated and real data are used to illustrate the practical difference between classical and guaranteedโ€content prediction intervals for ARCH models. Copyright ยฉ 2001 John Wiley & Sons, Ltd.


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