gBox {TSA} | R Documentation |
Generalized Portmanteau Tests for GARCH Models
Description
Perform a goodness-of-fit test for the GARCH model by checking whether the standardized residuals are iid based on the ACF of the absolute residuals or squared residuals.
Usage
gBox(model, lags = 1:20, x, method = c("squared", "absolute")[1], plot = TRUE)
Arguments
model |
fitted model from the garch function of the tseries library |
lags |
a vector of maximum ACF lags to be used in the test |
x |
time series data to which the GARCH model is fitted |
method |
"squared": test is based on squared residuals; "absolute": test is based on absolute residuals |
plot |
logical variable, if TRUE, the p-values of the tests are plotted |
Value
lags |
lags in the input |
pvalue |
a vector of p-values of the tests |
method |
method used |
x |
x |
Author(s)
Kung-Sik Chan
References
"Time Series Analysis, with Applications in R" by J.D. Cryer and K.S. Chan
Examples
require(tseries) # need to uncomment this line when running the example
data(CREF)
r.cref=diff(log(CREF))*100
m1=tseries::garch(x=r.cref,order=c(1,1))
summary(m1)
gBox(m1,x=r.cref,method='squared')
[Package TSA version 1.3.1 Index]