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rugarch (version 1.0-3)

multifit-methods: function: Univariate GARCH and ARFIMA Multiple Fitting

Description

Method for multiple fitting a variety of univariate GARCH and ARFIMA models.

Usage

multifit(multispec, data, out.sample = 0, 
solver = "solnp", solver.control = list(), 
fit.control = list(stationarity = 1, fixed.se = 0, scale = 0), 
parallel = FALSE, parallel.control = list(pkg = c("multicore", "snowfall"), 
cores = 2), ...)

Arguments

multispec
A multiple GARCH or ARFIMA spec object of class uGARCHmultispec and ARFIMAmultispec.
out.sample
A positive integer indicating the number of periods before the last to keep for out of sample forecasting (see details).
data
A multivariate data object. Can be a matrix or data.frame object, no other class supported at present.
solver
One of either nlminb or solnp.
solver.control
Control arguments list passed to optimizer.
fit.control
Control arguments passed to the fitting routine. Stationarity (only for the GARCH case) explicitly imposes the variance stationarity constraint during optimization. The fixed.se argument controls whether standard errors should be calculated for thos
parallel
Whether to make use of parallel processing on multicore systems.
parallel.control
The parallel control options including the type of package for performing the parallel calculations (multicore for non-windows O/S and snowfall for all O/S), and the number of cores to make use of.
...
.

Value

  • A uGARCHmultifit or ARFIMAmultifit object containing details of the GARCH or ARFIMA fits.

Examples

Run this code
data(dji30ret)
spec = ugarchspec()
mspec = multispec( replicate(spec, n = 4) )
fitlist = multifit(multispec = mspec, data = dji30ret[,1:4])

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