Provides index plots of influence and related diagnostics for a regression model.
infIndexPlot(model, ...)influenceIndexPlot(model, ...)
# S3 method for lm
infIndexPlot(model, vars=c("Cook", "Studentized", "Bonf", "hat"),
id=TRUE, grid=TRUE, main="Diagnostic Plots", ...)
# S3 method for influence.merMod
infIndexPlot(model,
vars = c("dfbeta", "dfbetas", "var.cov.comps",
"cookd"), id = TRUE, grid = TRUE, main = "Diagnostic Plots", ...)
# S3 method for influence.lme
infIndexPlot(model,
vars = c("dfbeta", "dfbetas", "var.cov.comps",
"cookd"), id = TRUE, grid = TRUE, main = "Diagnostic Plots", ...)
A regression object of class lm
, glm
, or lmerMod
, or an influence
object for a lmer
, glmer
, or lme
object (see
influence.mixed.models
). The "lmerMod"
method calls the "lm"
method and can take the same arguments.
All the quantities listed in this argument are plotted. Use "Cook"
for Cook's distances, "Studentized"
for Studentized
residuals, "Bonf"
for Bonferroni p-values for an outlier test, and
and "hat"
for hat-values (or leverages) for a linear or generalized
linear model, or "dfbeta"
, "dfbetas"
, "var.cov.comps"
, and
"cookd"
for an influence object derived from a mixed model. Capitalization is optional.
All but "dfbeta"
and "dfbetas"
may be abbreviated by the first one or more letters.
main title for graph
a list of named values controlling point labelling. The default, TRUE
, is
equivalent to id=list(method="y", n=2, cex=1, col=carPalette()[1], location="lr")
;
FALSE
suppresses point labelling. See showLabels
for details.
If TRUE, the default, a light-gray background grid is put on the graph.
Arguments passed to plot
Used for its side effect of producing a graph. Produces index plots of diagnostic quantities.
Cook, R. D. and Weisberg, S. (1999) Applied Regression, Including Computing and Graphics. Wiley.
Fox, J. (2016) Applied Regression Analysis and Generalized Linear Models, Third Edition. Sage. Fox, J. and Weisberg, S. (2019) An R Companion to Applied Regression, Third Edition, Sage.
Weisberg, S. (2014) Applied Linear Regression, Fourth Edition, Wiley.
cooks.distance
, rstudent
,
outlierTest
, hatvalues
, influence.mixed.models
.
# NOT RUN {
influenceIndexPlot(lm(prestige ~ income + education + type, Duncan))
# }
Run the code above in your browser using DataLab