Quantile forecasts are central to risk management decisions because of the widespread
use of Value-at-Risk. A quantile forecast is the product of two factors: the model used to
forecast volatility, and the method of computing quantiles from the volatility forecasts. In
this paper we calculate and evaluate quantile forecasts of the daily exchange rate returns
of five currencies. The forecasting models that have been used in recent analyses of the
predictability of daily realized volatility permit a comparison of the predictive power of
different measures of intraday variation and intraday returns in forecasting exchange rate
variability. The methods of computing quantile forecasts include making distributional
assumptions for future daily returns as well as using the empirical distribution of predicted
standardized returns with both rolling and recursive samples. Our main findings are that the
Heterogenous Autoregressive model provides more accurate volatility and quantile forecasts
for currencies which experience shifts in volatility, such as the Canadian dollar, and that
the use of the empirical distribution to calculate quantiles can improve forecasts when there
are shifts