Plots empirical quantiles of a variable, or of studentized residuals from
a linear model, against theoretical quantiles of a comparison distribution. Includes
options not available in the qqnorm
function.
qqPlot(x, ...)qqp(...)
# S3 method for default
qqPlot(x, distribution="norm", groups, layout,
ylim=range(x, na.rm=TRUE), ylab=deparse(substitute(x)),
xlab=paste(distribution, "quantiles"), glab=deparse(substitute(groups)),
main=NULL, las=par("las"),
envelope=.95, col=carPalette()[1], col.lines=carPalette()[2],
lwd=2, pch=1, cex=par("cex"),
line=c("quartiles", "robust", "none"), id=TRUE, grid=TRUE, ...)
# S3 method for formula
qqPlot(formula, data, subset, id=TRUE, ylab, glab, ...)
# S3 method for lm
qqPlot(x, xlab=paste(distribution, "Quantiles"),
ylab=paste("Studentized Residuals(",
deparse(substitute(x)), ")", sep=""),
main=NULL, distribution=c("t", "norm"),
line=c("robust", "quartiles", "none"), las=par("las"),
simulate=TRUE, envelope=.95, reps=100,
col=carPalette()[1], col.lines=carPalette()[2], lwd=2, pch=1, cex=par("cex"),
id=TRUE, grid=TRUE, ...)
vector of numeric values or lm
object.
root name of comparison distribution -- e.g., "norm"
for the
normal distribution; t
for the t-distribution.
an optional factor; if specified, a QQ plot will be drawn for x
within each level of groups
.
a 2-vector with the number of rows and columns for plotting by
groups -- for example c(1, 3)
for 1 row and 3 columns; if omitted, the
number of rows and columns will be selected automatically; the specified number
of rows and columns must be sufficient to accomodate the number of groups; ignored
if there is no grouping factor.
one-sided formula specifying a single variable to be plotted or a two-sided formula of
the form variable ~ factor
, where a QQ plot will be drawn for variable
within each
level of factor
.
optional data frame within which to evaluage the formula.
optional subset expression to select cases to plot.
limits for vertical axis; defaults to the range of x
. If plotting by groups, a common
y-axis is used for all groups.
label for vertical (empirical quantiles) axis.
label for horizontal (comparison quantiles) axis.
label for the grouping variable.
label for plot.
confidence level for point-wise confidence envelope, or
FALSE
for no envelope.
if 0
, ticks labels are drawn parallel to the
axis; set to 1
for horizontal labels (see par
).
color for points; the default is the first entry
in the current car palette (see carPalette
and par
).
color for lines; the default is the second entry in the current car palette.
plotting character for points; default is 1
(a circle, see par
).
factor for expanding the size of plotted symbols; the default is
1
.
controls point identification; if FALSE
, no points are identified;
can be a list of named arguments to the showLabels
function;
TRUE
is equivalent to list(method="y", n=2, cex=1, col=carPalette()[1], location="lr")
,
which identifies the 2 points with the 2 points with the most extreme
verical values --- studentized residuals for the "lm"
method. Points labels are by default
taken from the names of the variable being plotted is any, else case indices are used. Unlike most graphical functions in car, the default is id=TRUE
to include point identification.
line width; default is 2
(see par
).
"quartiles"
to pass a line through the quartile-pairs, or
"robust"
for a robust-regression line; the latter uses the rlm
function in the MASS
package. Specifying line = "none"
suppresses the line.
if TRUE
calculate confidence envelope by parametric bootstrap;
for lm
object only. The method is due to Atkinson (1985).
integer; number of bootstrap replications for confidence envelope.
arguments such as df
to be passed to the appropriate quantile function.
If TRUE, the default, a light-gray background grid is put on the graph
These functions return the labels of identified points, unless a grouping factor is employed,
in which case NULL
is returned invisibly.
Draws theoretical quantile-comparison plots for variables and for studentized residuals from a linear model. A comparison line is drawn on the plot either through the quartiles of the two distributions, or by robust regression.
Any distribution for which quantile and
density functions exist in R (with prefixes q
and d
, respectively) may be used.
When plotting a vector, the confidence envelope is based on the SEs of the order statistics
of an independent random sample from the comparison distribution (see Fox, 2016).
Studentized residuals from linear models are plotted against the appropriate t-distribution with a point-wise
confidence envelope computed by default by a parametric bootstrap,
as described by Atkinson (1985).
The function qqp
is an abbreviation for qqPlot
.
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.
Atkinson, A. C. (1985) Plots, Transformations, and Regression. Oxford.
# NOT RUN {
x<-rchisq(100, df=2)
qqPlot(x)
qqPlot(x, dist="chisq", df=2)
qqPlot(~ income, data=Prestige, subset = type == "prof")
qqPlot(income ~ type, data=Prestige, layout=c(1, 3))
qqPlot(lm(prestige ~ income + education + type, data=Duncan),
envelope=.99)
# }
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