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car (version 3.0-6)

Boot: Bootstrapping for regression models

Description

This function provides a simple front-end to the boot function in the boot package that is tailored to bootstrapping based on regression models. Whereas boot is very general and therefore has many arguments, the Boot function has very few arguments.

Usage

Boot(object, f=coef, labels=names(f(object)), R=999,
  method=c("case", "residual"), ncores=1, …)

# S3 method for default Boot(object, f=coef, labels=names(f(object)), R=999, method=c("case", "residual"), ncores=1, start = FALSE, …)

# S3 method for lm Boot(object, f=coef, labels=names(f(object)), R=999, method=c("case", "residual"), ncores=1, …)

# S3 method for glm Boot(object, f=coef, labels=names(f(object)), R=999, method=c("case", "residual"), ncores=1, …)

# S3 method for nls Boot(object, f=coef, labels=names(f(object)), R=999, method=c("case", "residual"), ncores=1, …)

Arguments

object

A regression object of class "lm", "glm" or "nls". The function may work with other regression objects that support the update method and have a subset argument. See discussion of the default method in the details below.

f

A function whose one argument is the name of a regression object that will be applied to the updated regression object to compute the statistics of interest. The default is coef, to return regression coefficient estimates. For example, f = function(obj) coef(obj)[1]/coef(obj)[2] will bootstrap the ratio of the first and second coefficient estimates.

labels

Provides labels for the statistics computed by f. Default labels are obtained from a call to f, or generic labels if f does not return names.

R

Number of bootstrap samples. The number of bootstrap samples actually computed may be smaller than this value if either the fitting method is iterative and fails to converge for some boothstrap samples, or if the rank of a fitted model is different in a bootstrap replication than in the original data.

method

The bootstrap method, either “case” for resampling cases or “residuals” for a residual bootstrap. See the details below. The residual bootstrap is available only for lm and nls objects and will return an error for glm objects.

Arguments passed to the boot function, see boot.

start

Should the estimates returned by f be passed as starting values for each bootstrap iteration? Alternatively, start can be a numeric vector of starting values. The default is to use the estimates from the last bootstrap iteration as starting values for the next iteration.

ncores

A numeric argument that specifies the number of cores for parallel processing for unix systems. If less than or equal to 1, no parallel processing wiill be used. Note in a Windows platform will produce a warning and set this argument to 1.

Value

See boot for the returned value of the structure returned by this function.

Details

Boot uses a regression object and the choice of method, and creates a function that is passed as the statistic argument to the boot function in the boot package. The argument R is also passed to boot. If ncores is greater than 1, then the parallel and ncpus arguments to boot are set appropriately to use multiple codes, if available, on your computer. All other arguments to boot are kept at their default values unless you pass values for them.

The methods available for lm and nls objects are “case” and “residual”. The case bootstrap resamples from the joint distribution of the terms in the model and the response. The residual bootstrap fixes the fitted values from the original data, and creates bootstraps by adding a bootstrap sample of the residuals to the fitted values to get a bootstrap response. It is an implementation of Algorithm 6.3, page 271, of Davison and Hinkley (1997). For nls objects ordinary residuals are used in the resampling rather than the standardized residuals used in the lm method. The residual bootstrap for generalized linear models has several competing approaches, but none are without problems. If you want to do a residual bootstrap for a glm, you will need to write your own call to boot.

For the default object to work with other types of regression models, the model must have methods for the the following generic functions: residuals(object, type="pearson") must return Pearson residuals; fitted(object) must return fitted values; hatvalues(object) should return the leverages, or perhaps the value 1 which will effectively ignore setting the hatvalues. In addition, the data argument should contain no missing values among the columns actually used in fitting the model, as the resampling may incorrectly attempt to include cases with missing values. For lm, glm and nls, missing values cause the return of an error message.

An attempt to fit using a bootstrap sample may fail. In a lm or glm fit, the bootstrap sample could have a different rank from the original fit. In an nls fit, convergence may not be obtained for some bootstraps. In either case, NA are returned for the value of the function f. The summary methods handle the NAs appropriately.

Fox and Weisberg (2017) cited below discusses this function and provides more examples.

References

Davison, A, and Hinkley, D. (1997) Bootstrap Methods and their Applications. Oxford: Oxford University Press.

Fox, J. and Weisberg, S. (2019) Companion to Applied Regression, Third Edition. Thousand Oaks: Sage.

Fox, J. and Weisberg, S. (2019) Bootstrapping Regression Models in R, https://socialsciences.mcmaster.ca/jfox/Books/Companion/appendices/Appendix-Bootstrapping.pdf.

Weisberg, S. (2014) Applied Linear Regression, Fourth Edition, Wiley Wiley, Chapters 4 and 11.

See Also

Functions that work with boot objects from the boot package are boot.array, boot.ci, plot.boot and empinf. Additional functions in the car package are summary.boot, confint.boot, and hist.boot.

Examples

Run this code
# NOT RUN {
m1 <- lm(Fertility ~ ., swiss)
betahat.boot <- Boot(m1, R=199) # 199 bootstrap samples--too small to be useful
summary(betahat.boot)  # default summary
confint(betahat.boot)
hist(betahat.boot)
# Bootstrap for the estimated residual standard deviation:
sigmahat.boot <- Boot(m1, R=199, f=sigmaHat, labels="sigmaHat")
summary(sigmahat.boot)
confint(sigmahat.boot)
# }

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