2007-02-05Buch DOI: 10.18452/4024
Quantile Sieve Estimates For Time Series
We consider the problem of estimating the conditional quantile of a time series at time t given observations of the same and perhaps other time series available at time t − 1. We discuss sieve estimates which are a nonparametric versions of the Koenker-Bassett regression quantiles and do not require the specification of the innovation law. We prove consistency of those estimates and illustrate their good performance for light- and heavy-tailed distributions of the innovations with a small simulation study. As an economic application, we use the estimates for calculating the value at risk of some stock price series.
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