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calibration(x, ...)
"calibration"(x, ...)
"calibration"(x, data = NULL, class = NULL, cuts = 11, subset = TRUE, lattice.options = NULL, ...)
"print"(x, ...)
"xyplot"(x, data = NULL, ...)
"ggplot"(data, ..., bwidth = 2, dwidth = 3)
lattice
formula (see xyplot
for syntax) where the left
-hand side of the formula is a factor class variable of the observed outcome and the right-hand side
specifies one or model columns corresponding to a numeric ranking variable for a model (e.g. class
probabilities). The classification variable should have two levels.calibration.formula
, a data frame (or more precisely, anything that is a valid
envir
argument in eval
, e.g., a list or an environment) containing values for any
variables in the formula, as well as groups
and subset
if applicable. If not found in
data
, or if data
is unspecified, the variables are looked for in the environment of the
formula. This argument is not used for xyplot.calibration
. For ggplot.calibration, data
should be an object of class "calibration
"."data
. If a vector, these are the
actual cuts that will be used.data
. Only the resulting rows of data
are used for the plot.lattice.options
xyplot
or the panel function (not
used in calibration.formula
).calibration.formula
returns a list with elements:
returns a list with elements:xyplot.calibration
returns a lattice object
calibration.formula
is used to process the data and xyplot.calibration
is used to create the plot.To construct the calibration plot, the following steps are used for each model:
cuts - 1
roughly equal groups by their class probabilities
class
are determined
xyplot.calibration
produces a plot of the observed event rate by the mid-point of the bins.
This implementation uses the lattice function xyplot
, so plot
elements can be changed via panel functions, trellis.par.set
or
other means. calibration
uses the panel function panel.calibration
by default, but
it can be changed by passing that argument into xyplot.calibration
.
The following elements are set by default in the plot but can be changed by passing new values into
xyplot.calibration
: xlab = "Bin Midpoint"
, ylab = "Observed Event Percentage"
,
type = "o"
, ylim = extendrange(c(0, 100))
,xlim = extendrange(c(0, 100))
and
panel = panel.calibration
For the ggplot
method, confidence intervals on the estimated proportions (from
binom.test
) are also shown.
xyplot
, trellis.par.set
## Not run:
# data(mdrr)
# mdrrDescr <- mdrrDescr[, -nearZeroVar(mdrrDescr)]
# mdrrDescr <- mdrrDescr[, -findCorrelation(cor(mdrrDescr), .5)]
#
#
# inTrain <- createDataPartition(mdrrClass)
# trainX <- mdrrDescr[inTrain[[1]], ]
# trainY <- mdrrClass[inTrain[[1]]]
# testX <- mdrrDescr[-inTrain[[1]], ]
# testY <- mdrrClass[-inTrain[[1]]]
#
# library(MASS)
#
# ldaFit <- lda(trainX, trainY)
# qdaFit <- qda(trainX, trainY)
#
# testProbs <- data.frame(obs = testY,
# lda = predict(ldaFit, testX)$posterior[,1],
# qda = predict(qdaFit, testX)$posterior[,1])
#
# calibration(obs ~ lda + qda, data = testProbs)
#
# calPlotData <- calibration(obs ~ lda + qda, data = testProbs)
# calPlotData
#
# xyplot(calPlotData, auto.key = list(columns = 2))
# ## End(Not run)
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