| uGARCHdistribution-class {rugarch} | R Documentation | 
Class for the univariate GARCH Parameter Distribution.
A virtual Class: No objects may be created from it.
Class "GARCHdistribution", directly.
Class "rGARCH", by class "GARCHdistribution", distance 2.
signature(x = "uGARCHdistribution"): 
Extracts various values from object (see note).
signature(x = "uGARCHdistribution", y = "missing"): 
Parameter Distribution Plots. 
signature(object = "uGARCHdistribution"): 
Parameter Distribution Summary. 
The as.data.frame function takes optionally 2 additional arguments, 
namely window which indicates the particular distribution window number 
for which data is required (is usually just 1 unless the recursive option was 
used), and which indicating the type of data required. Valid values for 
the latter are “rmse” for the root mean squared error between simulation 
fit and actual parameters, “stats” for various statistics computed for 
the simulations such as log likelihood, persistence, unconditional variance and 
mean, “coef” for the estimated coefficients (i.e. the parameter 
distribution and is the default choice), and “coefse” for the estimated 
robust standard errors of the coefficients (i.e. the parameter standard error 
distribution).
The plot method offers 4 plot types, namely, Parameter Density Plots (take 
window as additional argument), Bivariate Plots (take window as 
additional argument), Stats and RMSE (only when recursive option used) Plots.
The standard option for which is used, allowing for a numeric arguments 
to one of the four plot types else interactive choice via “ask”.
Alexios Ghalanos
Classes uGARCHforecast, uGARCHfit and 
uGARCHspec.
## Not run: data(sp500ret) spec = ugarchspec(variance.model=list(model="gjrGARCH", garchOrder=c(1,1)), mean.model=list(armaOrder=c(1,1), arfima=FALSE, include.mean=TRUE, archm = FALSE, archpow = 1), distribution.model="std") fit = ugarchfit(data=sp500ret[, 1, drop = FALSE], out.sample = 0, spec = spec, solver = "solnp") dist = ugarchdistribution(fit, n.sim = 2000, n.start = 50, m.sim = 5) ## End(Not run)