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rugarch (version 1.0-3)

ugarchsim-methods: function: Univariate GARCH Simulation

Description

Method for simulation from a variety of univariate GARCH models.

Usage

ugarchsim(fit, n.sim = 1000, n.start = 0, m.sim = 1, 
startMethod = c("unconditional", "sample"), presigma = NA, prereturns = NA, 
preresiduals = NA, rseed = NA, custom.dist = list(name = NA, distfit = NA), 
mexsimdata = NULL, vexsimdata = NULL, ...)

Arguments

fit
A univariate GARCH fit object of class uGARCHfit.
n.sim
The simulation horizon.
n.start
The burn-in sample.
m.sim
The number of simulations.
startMethod
Starting values for the simulation. Valid methods are unconditional for the expected values given the density, and sample for the ending values of the actual data from the fit object.
presigma
Allows the starting sigma values to be provided by the user.
prereturns
Allows the starting return data to be provided by the user.
preresiduals
Allows the starting residuals to be provided by the user.
rseed
Optional seeding value(s) for the random number generator. For m.sim>1, it is possible to provide either a single seed to initialize all values, or one seed per separate simulation (i.e. m.sim seeds). However, in the latter case this may result in s
custom.dist
Optional density with fitted object from which to simulate. See notes below for details.
mexsimdata
List of matrices (size of list m.sim, with each matrix having n.sim rows) of simulated external regressor-in-mean data. If the fit object contains external regressors in the mean equation, this must be provided else will be assumed zero.
vexsimdata
List of matrices (size of list m.sim, with each matrix having n.sim rows) of simulated external regressor-in-variance data. If the fit object contains external regressors in the mean equation, this must be provided else will be assumed zero.
...
.

Value

  • A uGARCHsim object containing details of the GARCH simulation.

Details

The custom.dist option allows for defining a custom density which exists in the users workspace with methods for r (sampling, e.g. rnorm) and d (density e.g. dnorm). It must take a single fit object as its second argument. Alternatively, custom.dist can take any name in the name slot (e.g.sample) and a matrix in the fit slot with dimensions equal to m.sim (columns) and n.sim (rows). The usefulness of this becomes apparent when one is considering the copula-GARCH approach or the bootstrap method.

See Also

For specification ugarchspec, fitting ugarchfit, filtering ugarchfilter, forecasting ugarchforecast, rolling forecast and estimation ugarchroll, parameter distribution and uncertainty ugarchdistribution, bootstrap forecast ugarchboot.

Examples

Run this code
# Basic GARCH(1,1) Spec
data(dmbp)
spec = ugarchspec()
fit = ugarchfit(data = dmbp[,1], spec = spec)
sim = ugarchsim(fit,n.sim=1000, n.start=1, m.sim=1, startMethod="sample")
sim
# plot(sim, which="all")
# as.data.frame takes an extra argument which
# indicating one of "sigma", "series" and "residuals"
head(as.data.frame(sim, which = "sigma"))

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