## S3 method for class 'lts':
plot.lts(x, which = c("all","rqq","rindex","rfit","rdiag"), classic=FALSE, ask=(which=="all" && dev.interactive()), id.n, ...)
lts
object, typically result of ltsReg
.which
="all".classic
=FALSE.ask = which=="all" && dev.interactive()
.which
.
The possible options are:
rqq
- Normal Q-Q plot of the standardized residuals;
rindex
- plot of the standardized residuals versus their index;
rfit
- plot of the standardized residuals versus fitted values;
rdiag
- regression diagnostic plot.
The normal quantile plot produces a normal Q-Q plot of the standardized residuals.
A line is drawn which passes through the first and third quantile. The id.n residuals,
with largest distances from this line are identified by labels (the observation number).
The default for id.n is the number of regression outliers (lts.wt==0).
In the Index plot and in the Fitted values plot the standardized residuals are
displayed against the observation number or the fitted value respectively.
A horizontal dashed line is drawn at 0 and two solid horizontal lines are
located at +2.5 and -2.5. The id.n residuals with largest absolute values are
identified by labels (the observation number). The default for id.n is the
number regression outliers (lts.wt==0).
The regression diagnostic plot, introduced by Rousseeuw and van
Zomeren (1990), displays the standardized residuals versus robust
distances. Following Rousseeuw and van Zomeren (1990), the
horizontal dashed lines are located at +2.5 and -2.5 and the
vertical line is located at the upper 0.975 percent point of the
chi-squared distribution with p degrees of freedom. The id.n residuals
with largest absolute values and/or largest robust Mahalanobis distances are
identified by labels (the observation number). The default for id.n is the number of all outliers:
regression outliers (lts.wt==0) + leverage (bad and good) points (RD > 0.975 percent point of the
chi-squared distribution with p degrees of freedom).covPlot
data(hbk)
lts <- ltsReg(hbk.x,hbk.y)
plot(lts, which="rqq")
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