I'm trying calculate 1-period timeseries forecasts with an ARMA(1,1)-Garch(1,1) model in R, using the rugarch package. When using the forecasting function from rugarch, however, I get results that are different from those obtained by plugging the values into the Garch equations -- the conditional variance is similar in both cases, but the series forecast differs in sign (-0.0003 vs. 0.0002).
I'm using this equation for the return series forecast:
where c[i] are the ARMA coefficients, "ret" the daily return series to be forecasted and "res" the vector of residuals, "last" is tail(x,1) and gives the most recent observation of vector x.
I must be missing something here - does anyone have an idea how that formula could be wrong or if the rugarch forecast is calculated differently (the code for rugarch is shown below)? Any help is appreciated!
spec = ugarchspec(variance.model = list(model = "fGARCH", submodel="GARCH", garchOrder = c(1,1)), mean.model = list(armaOrder = c(1,1), include.mean = TRUE), distribution.model = "norm")
fit = ugarchfit(spec = spec, data = ret, solver.control = list(trace = 0))
forc = ugarchforecast(fit, n.ahead=1)