Calculate autocorrelation diagnostics of a time series matrix or TSdata or residuals of a TSestModel
checkResiduals(obj, ...)
# S3 method for default
checkResiduals(obj, ac=TRUE, pac=TRUE, select=seq(nseries(obj)),
drop=NULL, plot.=TRUE, graphs.per.page=5, verbose=FALSE, ...)
# S3 method for TSdata
checkResiduals(obj, ...)
# S3 method for TSestModel
checkResiduals(obj, ...)
An TSestModel or TSdata object.
If TRUE the auto-correlation function is plotted.
If TRUE the partial auto-correlation function is plotted.
Is used to indicate a subset of the residual series. By default all residuals are used.
Is used to indicate a subset of the residual time periods to drop. All residuals are used with the default (NULL).Typically this can be used to get rid of bad initial conditions (eg. drop=seq(10) ) or outliers.
If FALSE then plots are not produced.
Integer indicating number of graphs to place on a page.
If TRUE then the auto-correlations and partial auto-correlations are printed if they are calculated.
arguments passed to other methods.
A list with residual diagnostic information: residuals, mean, cov, acf= autocorrelations, pacf= partial autocorrelations.
Diagnostic information is printed and plotted if a device is available. Output graphics can be paused between pages by setting par(ask=TRUE).
This is a generic function. The default method works for a time series matrix which is treated as if it were a matrix of residuals. However, in a Box-Jenkins type of analysis the matrix may be data which is being evaluated to determine a model. The method for a TSestModel evaluates the residuals calculated by subtracting the output data from the model predictions.
# NOT RUN {
data("eg1.DSE.data.diff", package="dse")
model <- estVARXls(eg1.DSE.data.diff)
checkResiduals(model)
# }
Run the code above in your browser using DataLab