Nonparametric Estimates for Conditional Quantiles of Time Series
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Date
2014Author
Franke, Jürgen
Mwita, Peter N.
Wang, Weining
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We consider the problem of estimating the conditional quantile of
a time series fYtg at time t given covariates Xt
, where Xt can either exogenous variables or lagged variables of Yt
. The conditional
quantile is estimated by inverting a kernel estimate of the conditional
distribution function, and we prove its asymptotic normality and uniform strong consistency. The performance of the estimate for light
and heavy-tailed distributions of the innovations are evaluated by a
simulation study. Finally, the technique is applied to estimate VaR
of stocks in DAX, and its performance is compared with the existing
standard methods using backtesting.