predab.resample
is a general-purpose
function that is used by functions for specific models.
It computes estimates of optimism of, and bias-corrected estimates of a vector
of indexes of predictive accuracy, for a model with a specified
design matrix, with or without fast backward step-down of predictors. If bw=TRUE
, the design
matrix x
must have been created by ols
, lrm
, or cph
.
If bw=TRUE
, predab.resample
stores as the kept
attribute a logical matrix encoding which
factors were selected at each repetition.
predab.resample(fit.orig, fit, measure,
method=c("boot","crossvalidation",".632","randomization"),
bw=FALSE, B=50, pr=FALSE, prmodsel=TRUE,
rule="aic", type="residual", sls=.05, aics=0,
tol=1e-12, force=NULL, estimates=TRUE,
non.slopes.in.x=TRUE, kint=1,
cluster, subset, group=NULL,
allow.varying.intercepts=FALSE, debug=FALSE, …)
object containing the original full-sample fit, with the x=TRUE
and
y=TRUE
options specified to the model fitting function. This model
should be the FULL model including all candidate variables ever excluded
because of poor associations with the response.
a function to fit the model, either the original model fit, or a fit in a
sample. fit has as arguments x
,y
, iter
, penalty
, penalty.matrix
,
xcol
, and other arguments passed to predab.resample
.
If you don't want iter
as an argument inside the definition of fit
, add … to the end of its
argument list. iter
is passed to fit
to inform the function of the
sampling repetition number (0=original sample). If bw=TRUE
, fit
should
allow for the possibility of selecting no predictors, i.e., it should fit an
intercept-only model if the model has intercept(s). fit
must return
objects coef
and fail
(fail=TRUE
if fit
failed due to singularity or
non-convergence - these cases are excluded from summary statistics). fit
must add design attributes to the returned object if bw=TRUE
.
The penalty.matrix
parameter is not used if penalty=0
. The xcol
vector is a vector of columns of X
to be used in the current model fit.
For ols
and psm
it includes a 1
for the intercept position.
xcol
is not defined if iter=0
unless the initial fit had been from
a backward step-down. xcol
is used to select the correct rows and columns
of penalty.matrix
for the current variables selected, for example.
a function to compute a vector of indexes of predictive accuracy for a given fit.
For method=".632"
or method="crossval"
, it will make the most sense for
measure to compute only indexes that are independent of sample size. The
measure function should take the following arguments or use …: xbeta
(X beta for
current fit), y
, evalfit
, fit
, iter
, and fit.orig
. iter
is as in fit
.
evalfit
is set to TRUE
by predab.resample
if the fit is being evaluated on the sample used to make the
fit, FALSE
otherwise; fit.orig
is the fit object returned by the original fit on the whole
sample. Using evalfit
will sometimes save computations. For example, in
bootstrapping the area under an ROC curve for a logistic regression model,
lrm
already computes the area if the fit is on the training sample.
fit.orig
is used to pass computed configuration parameters from the original fit such as
quantiles of predicted probabilities that are used as cut points in other samples.
The vector created by measure should have names()
associated with it.
The default is "boot"
for ordinary bootstrapping (Efron, 1983,
Eq. 2.10). Use ".632"
for Efron's .632
method (Efron,
1983, Section 6 and Eq. 6.10), "crossvalidation"
for grouped
cross--validation, "randomization"
for the randomization
method. May be abbreviated down to any level, e.g. "b"
,
"."
, "cross"
, "rand"
.
Set to TRUE
to do fast backward step-down for each training
sample. Default is FALSE
.
Number of repetitions, default=50. For method="crossvalidation"
,
this is also the number of groups the original sample is split into.
TRUE
to print results for each sample. Default is FALSE
.
set to FALSE
to suppress printing of model selection output such
as that from fastbw
.
Stopping rule for fastbw, "aic"
or "p"
. Default is
"aic"
to use Akaike's information criterion.
Type of statistic to use in stopping rule for fastbw, "residual"
(the default) or "individual"
.
Significance level for stopping in fastbw if rule="p"
. Default is
.05
.
Stopping criteria for rule="aic"
. Stops deleting factors when
chi-square - 2 times d.f. falls below aics
. Default is 0
.
Tolerance for singularity checking. Is passed to fit
and fastbw
.
see fastbw
see print.fastbw
set to FALSE
if the design matrix x
does not have columns for intercepts and these columns are needed
For multiple intercept models such as the ordinal logistic model, you may
specify which intercept to use as kint
. This affects the linear
predictor that is passed to measure
.
Vector containing cluster identifiers. This can be specified only if
method="boot"
. If it is present, the bootstrap is done using sampling
with replacement from the clusters rather than from the original records.
If this vector is not the same length as the number of rows in the data
matrix used in the fit, an attempt will be made to use naresid
on
fit.orig
to conform cluster
to the data.
See bootcov
for more about this.
specify a vector of positive or negative integers or a logical vector when
you want to have the measure
function compute measures of accuracy on
a subset of the data. The whole dataset is still used for all model development.
For example, you may want to validate
or calibrate
a model by
assessing the predictions on females when the fit was based on males and
females. When you use cr.setup
to build extra observations for fitting the
continuation ratio ordinal logistic model, you can use subset
to specify
which cohort
or observations to use for deriving indexes of predictive
accuracy. For example, specify subset=cohort=="all"
to validate the
model for the first layer of the continuation ratio model (Prob(Y=0)).
a grouping variable used to stratify the sample upon bootstrapping. This allows one to handle k-sample problems, i.e., each bootstrap sample will be forced to selected the same number of observations from each level of group as the number appearing in the original dataset.
set to TRUE
to not throw an error
if the number of intercepts varies from fit to fit
set to TRUE
to print subscripts of all training and
test samples
The user may add other arguments here that are passed to fit
and
measure
.
a matrix of class "validate"
with rows corresponding
to indexes computed by measure
, and the following columns:
indexes in original overall fit
average indexes in training samples
average indexes in test samples
average training-test
except for method=".632"
- is .632 times
(index.orig - test)
index.orig-optimism
number of successful repetitions with the given index non-missing
For method=".632"
, the program stops with an error if every observation
is not omitted at least once from a bootstrap sample. Efron's ".632" method
was developed for measures that are formulated in terms on per-observation
contributions. In general, error measures (e.g., ROC areas) cannot be
written in this way, so this function uses a heuristic extension to
Efron's formulation in which it is assumed that the average error measure
omitting the i
th observation is the same as the average error measure
omitting any other observation. Then weights are derived
for each bootstrap repetition and weighted averages over the B
repetitions
can easily be computed.
Efron B, Tibshirani R (1997). Improvements on cross-validation: The .632+ bootstrap method. JASA 92:548--560.
# NOT RUN {
# See the code for validate.ols for an example of the use of
# predab.resample
# }
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