This is a plot of the dependent variable (DV) vs population predictions
(PRED) conditioned by the independent variable, 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.
dv.vs.pred.by.idv(object, abline = c(0, 1), smooth = TRUE, ...)Returns a stack of xyplots of DV vs PRED, conditioned on the independent variable.
An xpose.data object.
Vector of arguments to the panel.abline
function. No abline is drawn if NULL.
Logical value indicating whether an x-y smooth should be superimposed. The default is TRUE.
Other arguments passed to link{xpose.plot.default}.
E. Niclas Jonsson, Mats Karlsson, Andrew Hooker & Justin Wilkins
A wide array of extra options controlling xyplots are available. See
xpose.plot.default and xpose.panel.default for
details.
dv.vs.pred, xpose.plot.default,
xpose.panel.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.ipred.by.cov(),
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.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
dv.vs.pred.by.idv(simpraz.xpdb)
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