Usage
##gets of mean specification:
getsm(object, t.pval=0.05, wald.pval=0.05, vcov.type=NULL, do.pet=TRUE,
ar.LjungB=list(lag=NULL, pval=0.025), arch.LjungB=list(lag=NULL, pval=0.025),
normality.JarqueB=NULL, info.method=c("sc", "aic", "hq"), keep=NULL,
include.gum=FALSE, include.empty=FALSE, max.regs=NULL, zero.adj=NULL,
vc.adj=NULL, verbose=TRUE, print.searchinfo=TRUE, estimate.specific=TRUE,
plot=TRUE, alarm=FALSE)
##gets of variance specification:
getsv(object, t.pval=0.05, wald.pval=0.05, do.pet=TRUE,
ar.LjungB=list(lag=NULL, pval=0.025), arch.LjungB=list(lag=NULL, pval=0.025),
normality.JarqueB=NULL, info.method=c("sc", "aic", "hq"), keep=c(1),
include.gum=FALSE, include.empty=FALSE, max.regs=NULL, zero.adj=NULL,
vc.adj=NULL, verbose=TRUE, print.searchinfo=TRUE, estimate.specific=TRUE,
plot=TRUE, alarm=FALSE)
Arguments
object
an object of class 'arx'
t.pval
numeric value between 0 and 1. The significance level used for the two-sided regressor significance t-tests
wald.pval
numeric value between 0 and 1. The significance level used for the Parsimonious Encompassing Tests (PETs)
vcov.type
the type of variance-covariance matrix used. If NULL (default), then the type used in the estimation of the 'arx' object is used. This can be overridden by either "ordinary" (i.e. the ordinary variance-covariance matrix) or "white" (i.e. the White (1980)
do.pet
logical. If TRUE (default), then a Parsimonious Encompassing Test (PET) against the GUM is undertaken at each regressor removal for the joint significance of all the deleted regressors along the current path. If FALSE, then a PET is not undertaken at each
ar.LjungB
a two-item list with names lag
and pval
, or NULL. In the former case lag
contains the order of the Ljung and Box (1979) test for serial correlation in the standardised residuals, and pval
contains the si
arch.LjungB
a two-item list with names lag
and pval
, or NULL. In the former case, lag
contains the order of the Ljung and Box (1979) test for serial correlation in the squared standardised residuals, and pval
contai
normality.JarqueB
a value between 0 and 1, or NULL. In the former case, a test for non-normality is conducted using a significance level equal to the numeric value. If NULL
, then no test for non-normality is undertaken
info.method
character string, "sc" (default), "aic" or "hq", which determines the information criterion to be used when selecting among terminal models. The abbreviations are short for the Schwarz or Bayesian information criterion (sc), the Akaike information criteri
keep
the regressors to be excluded from removal in the specification search. Note that keep=c(1)
is obligatory when using getsv
. This excludes the log-variance intercept from removal. The regressor numbering is contained in the
include.gum
logical. If TRUE, then the GUM (i.e. the starting model) is included among the terminal models. If FALSE (default), then the GUM is not included
include.empty
logical. If TRUE, then an empty model is included among the terminal models, if it passes the diagnostic tests, even if it is not equal to one of the terminals. If FALSE (default), then the empty model is not included (unless it is one of the terminals)
max.regs
integer. The maximum number of regressions along a deletion path. It is not recommended that this is altered
zero.adj
numeric value between 0 and 1. The quantile adjustment for zero values. The default 0.1 means the zero residuals are replaced by the 10 percent quantile of the absolute residuals before taking the logarithm
vc.adj
logical. If TRUE (default), then the log-variance intercept is adjusted by the estimate of E[ln(z^2)]. This adjustment is needed for the conditional scale of e to be equal to the conditional standard deviation. If FALSE, then the log-variance intercept is
verbose
logical. TRUE (default) returns (slightly) more output than FALSE
print.searchinfo
logical. If TRUE (default), then a print is returned whenever simiplification along a new path is started
estimate.specific
logical. IF TRUE (default), then the specific model is estimated after model selection
plot
logical. If TRUE, then the fitted values and the residuals of the final model are plotted after model selection
alarm
logical. If TRUE, then a sound or beep is emitted (in order to alert the user) when the model selection ends