| bootcov {Design} | R Documentation |
bootcov computes a bootstrap estimate of the covariance matrix for a set
of regression coefficients from ols, lrm, cph, psm and any
other fit where x=TRUE, y=TRUE was used to store the data used in making
the original regression fit and where an appropriate fitter function
is provided here. The estimates obtained are not conditional on
the design matrix, but are instead unconditional estimates. For
small sample sizes, this will make a difference as the unconditional
variance estimates are larger. This function will also obtain
bootstrap estimates corrected for cluster sampling (intra-cluster
correlations) when a "working independence" model was used to fit
data which were correlated within clusters. This is done by substituting
cluster sampling with replacement for the usual simple sampling with
replacement. bootcov has an option (coef.reps) that causes all
of the regression coefficient estimates from all of the bootstrap
re-samples to be saved, facilitating computation of nonparametric
bootstrap confidence limits and plotting of the distributions of the
coefficient estimates (using histograms and kernel smoothing estimates).
The loglik option facilitates the calculation of simultaneous
confidence regions from quantities of interest that are functions of
the regression coefficients, using the method of Tibshirani(1996).
With Tibshirani's method, one computes the objective criterion (-2 log
likelihood evaluated at the bootstrap estimate of beta but with
respect to the original design matrix and response vector) for the
original fit as well as for all of the bootstrap fits. The confidence
set of the regression coefficients is the set of all coefficients that
are associated with objective function values that are less than or
equal to say the 0.95 quantile of the vector of B + 1 objective
function values. For the coefficients satisfying this condition,
predicted values are computed at a user-specified design matrix X,
and minima and maxima of these predicted values (over the qualifying
bootstrap repetitions) are computed to derive the final simultaneous
confidence band.
The bootplot function takes the output of bootcov and
either plots a histogram and kernel density
estimate of specified regression coefficients (or linear combinations
of them through the use of a specified design matrix X), or a
qqnorm plot of the quantities of interest to check for normality of
the maximum likelihood estimates. bootplot draws vertical lines at
specified quantiles of the bootstrap distribution, and returns these
quantiles for possible printing by the user. Bootstrap estimates may
optionally be transformed by a user-specified function fun before
plotting.
The confplot function also uses the output of bootcov but to
compute and optionally plot nonparametric bootstrap pointwise confidence
limits or (by default) Tibshirani (1996) simultaneous confidence sets.
A design matrix must be specified to allow confplot to compute
quantities of interest such as predicted values across a range
of values or differences in predicted values (plots of effects of
changing one or more predictor variable values).
bootplot and confplot are actually generic functions, with
the particular functions bootplot.bootcov and confplot.bootcov
automatically invoked for bootcov objects.
A service function called histdensity is also provided (for use with
bootplot). It runs hist and density on the same plot, using
twice the number of classes than the default for hist, and 1.5 times the
width than the default used by density.
A comprehensive example demonstrates the use of all of the functions.
bootcov(fit, cluster, B=200, fitter,
coef.reps=FALSE, loglik=coef.reps,
pr=FALSE, maxit=15, group)
bootplot(obj, which, X,
conf.int=c(.9,.95,.99),
what=c('density','qqnorm'),
fun=function(x)x, labels., ...)
confplot(obj, X, against,
method=c('simultaneous','pointwise'),
conf.int=0.95, fun=function(x)x,
add=FALSE, lty.conf=2, ...)
histdensity(y, xlab, nclass, width, mult.width=1, ...)
fit |
a fit object containing components x and y. For fits from
cph, the "strata" attribute of the x component is used to
obtain the vector of stratum codes.
|
obj |
an object created by bootcov with coef.reps=TRUE.
|
X |
a design matrix specified to confplot. See predict.Design or
contrast.Design. For bootplot, X is optional.
|
y |
a vector to pass to histdensity. NAs are ignored.
|
cluster |
a variable indicating groupings. cluster may be any type of vector
(factor, character, integer).
Unique values of cluster indicate
possibly correlated groupings of observations. Note the data used in
the fit and stored in fit$x and fit$y may have had observations
containing missing values deleted. It is assumed that if there were
any NAs, an naresid function exists for the class of fit. This
function restores NAs so that the rows of the design matrix
coincide with cluster.
|
B |
number of bootstrap repetitions. Default is 200. |
fitter |
the name of a function with arguments (x,y) that will fit bootstrap
samples. Default is taken from the class of fit if it is
ols, lrm, cph, psm.
|
coef.reps |
set to TRUE if you want to store a matrix of all bootstrap regression
coefficient estimates in the returned component boot.Coef.
|
loglik |
set to TRUE to store -2 log likelihoods for each bootstrap model, evaluated
against the original x and y data. The default is to do this when
coef.reps is specified as TRUE. The use of loglik=TRUE assumes that
an oos.loglik method exists for the type of model being analyzed,
to calculate out-of-sample -2 log likelihoods (see Design.Misc).
After the B -2 log likelihoods (stored in the element named
boot.loglik in the returned fit object), the B+1 element is
the -2 log likelihood for the original model fit.
|
pr |
set to TRUE to print the current sample number to monitor progress.
|
maxit |
maximum number of iterations, to pass to fitter
|
group |
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 select the same number of observations from
each level of group as the number appearing in the original dataset.
You may specify both group and cluster.
|
which |
one or more integers specifying which regression coefficients to
plot for bootplot
|
conf.int |
a vector (for bootplot, default is c(.9,.95,.99)) or scalar
(for confplot, default is .95) confidence level.
|
what |
for bootplot, specifies whether a density or a q-q plot is made
|
fun |
for bootplot or confplot specifies a function used to translate
the quantities of interest before analysis. A common choice is
fun=exp to compute anti-logs, e.g., odds ratios.
|
labels. |
a vector of labels for labeling the axes in plots produced by bootplot.
Default is row names of X if there are any, or sequential integers.
|
... |
For bootplot these are optional arguments passed to
histdensity. Also may be optional arguments passed to
plot by confplot or optional arguments passed to
hist from histdensity, such as xlim and
breaks. The argument probability=TRUE is always passed to
hist.
|
against |
For confplot, specifying against causes a plot to be made (or added to).
The against variable is associated with rows of X and is used as the
x-coordinates.
|
method |
specifies whether "pointwise" or "simultaneous" confidence regions
are derived by confplot. The default is simultaneous.
|
add |
set to TRUE to add to an existing plot, for confplot
|
lty.conf |
line type for plotting confidence bands in confplot. Default is
2 for dotted lines.
|
xlab |
label for x-axis for histdensity. Default is label attribute or
argument name if there is no label.
|
nclass |
passed to hist if present
|
width |
passed to density if present
|
mult.width |
multiplier by which to adjust the default width passed to density.
Default is 1.
|
If the fit has a scale parameter (e.g., a fit from psm), the log
of the individual bootstrap scale estimates are added to the vector
of parameter estimates and and column and row for the log scale are
added to the new covariance matrix (the old covariance matrix also
has this row and column).
a new fit object with class of the original object and with the element
orig.var added. orig.var is
the covariance matrix of the original fit. Also, the original var
component is replaced with the new bootstrap estimates. The component
boot.coef is also added. This contains the mean bootstrap estimates
of regression coefficients (with a log scale element added if
applicable). boot.Coef is added if coef.reps=TRUE. boot.loglik is
added if loglik=TRUE.
bootplot returns a (possible matrix) of quantities of interest and
the requested quantiles of them. confplot returns three vectors:
fitted, lower, and upper.
bootcov prints if pr=TRUE
Frank Harrell
Department of Biostatistics
Vanderbilt University
f.harrell@vanderbilt.edu
Bill Pikounis
Biometrics Research Department
Merck Research Laboratories
v_bill_pikounis@merck.com
Feng Z, McLerran D, Grizzle J (1996): A comparison of statistical methods for clustered data analysis with Gaussian error. Stat in Med 15:1793–1806.
Tibshirani R, Knight K (1996): Model search and inference by bootstrap
"bumping". Department of Statistics, University of Toronto. Technical
report available from
http://www-stat.stanford.edu/~tibs/.
Presented at the Joint Statistical Meetings,
Chicago, August 1996.
robcov, sample, Design, lm.fit, lrm.fit, coxph.fit, survreg.fit,
predab.resample, Design.Misc, predict.Design, gendata,
contrast.Design
set.seed(191)
x <- exp(rnorm(200))
logit <- 1 + x/2
y <- ifelse(runif(200) <= plogis(logit), 1, 0)
f <- lrm(y ~ pol(x,2), x=TRUE, y=TRUE)
g <- bootcov(f, B=50, pr=TRUE, coef.reps=TRUE)
anova(g) # using bootstrap covariance estimates
fastbw(g) # using bootstrap covariance estimates
beta <- g$boot.Coef[,1]
hist(beta, nclass=15) #look at normality of parameter estimates
qqnorm(beta)
# bootplot would be better than these last two commands
# A dataset contains a variable number of observations per subject,
# and all observations are laid out in separate rows. The responses
# represent whether or not a given segment of the coronary arteries
# is occluded. Segments of arteries may not operate independently
# in the same patient. We assume a "working independence model" to
# get estimates of the coefficients, i.e., that estimates assuming
# independence are reasonably efficient. The job is then to get
# unbiased estimates of variances and covariances of these estimates.
set.seed(1)
n.subjects <- 30
ages <- rnorm(n.subjects, 50, 15)
sexes <- factor(sample(c('female','male'), n.subjects, TRUE))
logit <- (ages-50)/5
prob <- plogis(logit) # true prob not related to sex
id <- sample(1:n.subjects, 300, TRUE) # subjects sampled multiple times
table(table(id)) # frequencies of number of obs/subject
age <- ages[id]
sex <- sexes[id]
# In truth, observations within subject are independent:
y <- ifelse(runif(300) <= prob[id], 1, 0)
f <- lrm(y ~ lsp(age,50)*sex, x=TRUE, y=TRUE)
g <- bootcov(f, id, B=50) # usually do B=200 or more
diag(g$var)/diag(f$var)
# add ,group=w to re-sample from within each level of w
anova(g) # cluster-adjusted Wald statistics
# fastbw(g) # cluster-adjusted backward elimination
plot(g, age=30:70, sex='female') # cluster-adjusted confidence bands
# Get design effects based on inflation of the variances when compared
# with bootstrap estimates which ignore clustering
g2 <- bootcov(f, B=50)
diag(g$var)/diag(g2$var)
# Get design effects based on pooled tests of factors in model
anova(g2)[,1] / anova(g)[,1]
# Simulate binary data where there is a strong
# age x sex interaction with linear age effects
# for both sexes, but where not knowing that
# we fit a quadratic model. Use the bootstrap
# to get bootstrap distributions of various
# effects, and to get pointwise and simultaneous
# confidence limits
set.seed(71)
n <- 500
age <- rnorm(n, 50, 10)
sex <- factor(sample(c('female','male'), n, rep=TRUE))
L <- ifelse(sex=='male', 0, .1*(age-50))
y <- ifelse(runif(n)<=plogis(L), 1, 0)
f <- lrm(y ~ sex*pol(age,2), x=TRUE, y=TRUE)
b <- bootcov(f, B=50, coef.reps=TRUE, pr=TRUE) # better: B=500
par(mfrow=c(2,3))
# Assess normality of regression estimates
bootplot(b, which=1:6, what='qq')
# They appear somewhat non-normal
# Plot histograms and estimated densities
# for 6 coefficients
w <- bootplot(b, which=1:6)
# Print bootstrap quantiles
w$quantiles
# Estimate regression function for females
# for a sequence of ages
ages <- seq(25, 75, length=100)
label(ages) <- 'Age'
# Plot fitted function and pointwise normal-
# theory confidence bands
par(mfrow=c(1,1))
p <- plot(f, age=ages, sex='female')
w <- p$x.xbeta
# Save curve coordinates for later automatic
# labeling using labcurve in the Hmisc library
curves <- vector('list',8)
curves[[1]] <- list(x=w[,1],y=w[,3])
curves[[2]] <- list(x=w[,1],y=w[,4])
# Add pointwise normal-distribution confidence
# bands using unconditional variance-covariance
# matrix from the 500 bootstrap reps
p <- plot(b, age=ages, sex='female', add=TRUE, lty=3)
w <- p$x.xbeta
curves[[3]] <- list(x=w[,1],y=w[,3])
curves[[4]] <- list(x=w[,1],y=w[,4])
dframe <- expand.grid(sex='female', age=ages)
X <- predict(f, dframe, type='x') # Full design matrix
# Add pointwise bootstrap nonparametric
# confidence limits
p <- confplot(b, X=X, against=ages, method='pointwise',
add=TRUE, lty.conf=4)
curves[[5]] <- list(x=ages, y=p$lower)
curves[[6]] <- list(x=ages, y=p$upper)
# Add simultaneous bootstrap confidence band
p <- confplot(b, X=X, against=ages, add=TRUE, lty.conf=5)
curves[[7]] <- list(x=ages, y=p$lower)
curves[[8]] <- list(x=ages, y=p$upper)
lab <- c('a','a','b','b','c','c','d','d')
labcurve(curves, lab)
# Now get bootstrap simultaneous confidence set for
# female:male odds ratios for a variety of ages
dframe <- expand.grid(age=ages, sex=c('female','male'))
X <- predict(f, dframe, type='x') # design matrix
f.minus.m <- X[1:100,] - X[101:200,]
# First 100 rows are for females. By subtracting
# design matrices are able to get Xf*Beta - Xm*Beta
# = (Xf - Xm)*Beta
confplot(b, X=f.minus.m, against=ages,
method='pointwise', ylab='F:M Log Odds Ratio')
confplot(b, X=f.minus.m, against=ages,
lty.conf=3, add=TRUE)
# contrast.Design makes it easier to compute the design matrix for use
# in bootstrapping contrasts:
f.minus.m <- contrast(f, list(sex='female',age=ages),
list(sex='male', age=ages))$X
confplot(b, X=f.minus.m)
# For a quadratic binary logistic regression model use bootstrap
# bumping to estimate coefficients under a monotonicity constraint
set.seed(177)
n <- 400
x <- runif(n)
logit <- 3*(x^2-1)
y <- rbinom(n, size=1, prob=plogis(logit))
f <- lrm(y ~ pol(x,2), x=TRUE, y=TRUE)
k <- coef(f)
k
vertex <- -k[2]/(2*k[3])
vertex
# Outside [0,1] so fit satisfies monotonicity constraint within
# x in [0,1], i.e., original fit is the constrained MLE
g <- bootcov(f, B=50, coef.reps=TRUE)
bootcoef <- g$boot.Coef # 100x3 matrix
vertex <- -bootcoef[,2]/(2*bootcoef[,3])
table(cut2(vertex, c(0,1)))
mono <- !(vertex >= 0 & vertex <= 1)
mean(mono) # estimate of Prob{monotonicity in [0,1]}
var(bootcoef) # var-cov matrix for unconstrained estimates
var(bootcoef[mono,]) # for constrained estimates
# Find second-best vector of coefficient estimates, i.e., best
# from among bootstrap estimates
g$boot.Coef[order(g$boot.loglik[-length(g$boot.loglik)])[1],]
# Note closeness to MLE