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plot
and lines
method for
R objects of class isoreg
.# S3 method for isoreg
plot(x, plot.type = c("single", "row.wise", "col.wise"),
main = paste("Isotonic regression", deparse(x$call)),
main2 = "Cumulative Data and Convex Minorant",
xlab = "x0", ylab = "x$y",
par.fit = list(col = "red", cex = 1.5, pch = 13, lwd = 1.5),
mar = if (both) 0.1 + c(3.5, 2.5, 1, 1) else par("mar"),
mgp = if (both) c(1.6, 0.7, 0) else par("mgp"),
grid = length(x$x) < 12, …)# S3 method for isoreg
lines(x, col = "red", lwd = 1.5,
do.points = FALSE, cex = 1.5, pch = 13, …)
isoreg
object.title
.par
, mainly
for the case of two plots.grid()
is used for the first plot, where as
vertical lines are drawn at ‘touching’ points for the
cumulative plot.lines()
: logical indicating if the step
points should be drawn as well (and as they are drawn in plot()
).lines()
,
where cex
and pch
are only used when do.points
is TRUE
.isoreg
for computation of isoreg
objects.require(graphics)
utils::example(isoreg) # for the examples there
plot(y3, main = "simple plot(.) + lines(<isoreg>)")
lines(ir3)
## 'same' plot as above, "proving" that only ranks of 'x' are important
plot(isoreg(2^(1:9), c(1,0,4,3,3,5,4,2,0)), plot.type = "row", log = "x")
plot(ir3, plot.type = "row", ylab = "y3")
plot(isoreg(y3 - 4), plot.t="r", ylab = "y3 - 4")
plot(ir4, plot.type = "ro", ylab = "y4", xlab = "x = 1:n")
## experiment a bit with these (C-c C-j):
plot(isoreg(sample(9), y3), plot.type = "row")
plot(isoreg(sample(9), y3), plot.type = "col.wise")
plot(ir <- isoreg(sample(10), sample(10, replace = TRUE)),
plot.type = "r")
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