absval.iwres.vs.ipred.by.cov {xpose4} | R Documentation |
Absolute individual weighted residuals vs individual predictions, conditioned on covariates, for Xpose 4
Description
This is a plot of absolute individual weighted residuals (|IWRES|) vs
individual predictions (IPRED) conditioned by covariates, a specific
function in Xpose 4. It is a wrapper encapsulating arguments to the
xpose.plot.default
function. Most of the options take their default
values from xpose.data object but may be overridden by supplying them as
arguments.
Usage
absval.iwres.vs.ipred.by.cov(
object,
ylb = "|IWRES|",
idsdir = "up",
type = "p",
smooth = TRUE,
main = "Default",
...
)
Arguments
object |
An xpose.data object. |
ylb |
A string giving the label for the y-axis. |
idsdir |
Direction for displaying point labels. The default is "up", since we are displaying absolute values. |
type |
Type of plot. The default is points only ("p"), but lines ("l") and both ("b") are also available. |
smooth |
Logical value indicating whether an x-y smooth should be superimposed. The default is TRUE. |
main |
The title of the plot. If |
... |
Other arguments passed to |
Details
Each of the covariates in the Xpose data object, as specified in
object@Prefs@Xvardef$Covariates
, is evaluated in turn, creating a
stack of plots.
A wide array of extra options controlling xyplots are available. See
xpose.plot.default
for details.
Value
Returns a stack of xyplots of |IWRES| vs IPRED, conditioned by covariates.
Author(s)
E. Niclas Jonsson, Mats Karlsson, Andrew Hooker & Justin Wilkins
See Also
absval.iwres.vs.ipred
,
xpose.plot.default
, xyplot
,
xpose.prefs-class
, xpose.data-class
Other specific functions:
absval.cwres.vs.cov.bw()
,
absval.cwres.vs.pred()
,
absval.cwres.vs.pred.by.cov()
,
absval.iwres.cwres.vs.ipred.pred()
,
absval.iwres.vs.cov.bw()
,
absval.iwres.vs.idv()
,
absval.iwres.vs.ipred()
,
absval.iwres.vs.pred()
,
absval.wres.vs.cov.bw()
,
absval.wres.vs.idv()
,
absval.wres.vs.pred()
,
absval.wres.vs.pred.by.cov()
,
absval_delta_vs_cov_model_comp
,
addit.gof()
,
autocorr.cwres()
,
autocorr.iwres()
,
autocorr.wres()
,
basic.gof()
,
basic.model.comp()
,
cat.dv.vs.idv.sb()
,
cat.pc()
,
cov.splom()
,
cwres.dist.hist()
,
cwres.dist.qq()
,
cwres.vs.cov()
,
cwres.vs.idv()
,
cwres.vs.idv.bw()
,
cwres.vs.pred()
,
cwres.vs.pred.bw()
,
cwres.wres.vs.idv()
,
cwres.wres.vs.pred()
,
dOFV.vs.cov()
,
dOFV.vs.id()
,
dOFV1.vs.dOFV2()
,
data.checkout()
,
dv.preds.vs.idv()
,
dv.vs.idv()
,
dv.vs.ipred()
,
dv.vs.ipred.by.cov()
,
dv.vs.ipred.by.idv()
,
dv.vs.pred()
,
dv.vs.pred.by.cov()
,
dv.vs.pred.by.idv()
,
dv.vs.pred.ipred()
,
gof()
,
ind.plots()
,
ind.plots.cwres.hist()
,
ind.plots.cwres.qq()
,
ipred.vs.idv()
,
iwres.dist.hist()
,
iwres.dist.qq()
,
iwres.vs.idv()
,
kaplan.plot()
,
par_cov_hist
,
par_cov_qq
,
parm.vs.cov()
,
parm.vs.parm()
,
pred.vs.idv()
,
ranpar.vs.cov()
,
runsum()
,
wres.dist.hist()
,
wres.dist.qq()
,
wres.vs.idv()
,
wres.vs.idv.bw()
,
wres.vs.pred()
,
wres.vs.pred.bw()
,
xpose.VPC()
,
xpose.VPC.both()
,
xpose.VPC.categorical()
,
xpose4-package
Examples
## Not run:
## We expect to find the required NONMEM run and table files for run
## 5 in the current working directory
xpdb5 <- xpose.data(5)
## Here we load the example xpose database
data(simpraz.xpdb)
xpdb <- simpraz.xpdb
## A vanilla plot
absval.iwres.vs.ipred.by.cov(xpdb)
## Custom axis labels
absval.iwres.vs.ipred.by.cov(xpdb, ylb="|IWRES|", xlb="IPRED")
## Custom colours and symbols, no IDs
absval.iwres.vs.ipred.by.cov(xpdb, cex=0.6, pch=3, col=1, ids=FALSE)
## End(Not run)