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influence.mixed.models: Influence Diagnostics for Mixed-Effects Models

Description

These functions compute deletion influence diagnostics for linear mixed-effects models fit by lme in the nlme package. The main function is a method for the influence generic function. Other functions are provided for computing dfbeta, dfbetas, cooks.distance, and influence on variance-covariance components based on the object computed by influence.lme.

Usage

# S3 method for lme
influence(model, groups, data, ncores=1, ...)

# S3 method for influence.lme cooks.distance(model, ...) # S3 method for influence.lme dfbeta(model, which = c("fixed", "var.cov"), ...) # S3 method for influence.lme dfbetas(model, ...)

Value

influence.lme returns an object of class

"influence.lme",

which contains the following elements:

"fixed.effects"

the estimated fixed effects for the model.

"fixed.effects[-groups]"

a matrix with columns corresponding to the fixed-effects coefficients and rows corresponding to groups, giving the estimated fixed effects with each group deleted in turn; groups is formed from the name(s) of the grouping factor(s).

"var.cov.comps"

the estimated variance-covariance parameters for the model.

"var.cov.comps[-groups]"

a matrix with the estimated covariance parameters (in columns) with each group deleted in turn.

"vcov"

The estimated covariance matrix of the fixed-effects coefficients.

"vcov[-groups]"

a list each of whose elements is the estimated covariance matrix of the fixed-effects coefficients with one group deleted.

"groups"

a character vector giving the names of the grouping factors.

"deleted"

the possibly composite grouping factor, each of whose elements is deleted in turn.

For plotting "influence.lme" objects, see infIndexPlot.

Arguments

model

in the case influence, a model of class "lme"; in the case of cooks.distance, dfbeta, or dfbetas, an object returned by influence.lme.

groups

a character vector containing the name of a grouping factor or names of grouping factors; if more than one name is supplied, then groups are defined by all combinations of levels of the grouping factors that appear in the data. If omitted, then each individual row of the data matrix is treated as a "group" to be deleted in turn.

data

an optional data frame with the data to which model was fit; influence.lme can access the data unless keep.data=FALSE was specified in the call to lme, so it's usually unnecessary to supply the data argument.

ncores

number of cores for parallel computation of diagnostics; if 1 (the default), the computation isn't parallelized; if Inf, all of the available physical cores (not necessarily logical cores --- see detectCores) on the computer will be used.

which

if "fixed.effects" (the default), return influence on the fixed effects; if "var.cov", return influence on the variance-covariance components.

...

ignored.

Author

J. Fox jfox@mcmaster.ca

Details

influence.lme starts with the estimated variance-covariance components from model and then refits the model omitting each group in turn.

The other functions are methods for the dfbeta, dfbetas, and cooks.distance generics, to be applied to the "influence.lme" object produced by the influence function; the dfbeta methods can also return influence on the variance-covariance components.

References

Fox, J. and Weisberg, S. (2019) An R Companion to Applied Regression, Third Edition, Sage.

See Also

lme, infIndexPlot.

Examples

Run this code

if (require(nlme)){
    print(fm1 <- lme(distance ~ age, data = Orthodont))
    infIndexPlot(influence(fm1, "Subject"))
    infIndexPlot(influence(fm1))
    }

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