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Many lines that are added to plots are just straight lines that span the plot.
abline()
is a good choice for this type of line. Say that we wished
to add a vertical line at 2.5 on the x axis to the plot to divide the women who
completed high school from those who didn't.
> abline(v=2.5,col=3,lty=3)
This would produce a green, dotted, vertical line across the plot. To divide the other axis, say that age 33 was to be marked.
> abline(h=33,col=4,lty=2)
would draw a blue, dashed, horizontal line at 33 on the y axis. We can also display regression lines.
> abline(lm(infert$age~as.numeric(infert$educ)),col=2,lty=1)
This draws a solid, red line illustrating the regression of education on age.
curve()
to
add it to your plot. Using the airquality
data, plot
airquality$Ozone
. Suppose you think that the probability of a given
concentration of ozone on any day is described by two linear functions, one
valid for the range 0 to 120, and the other for 120 and up.
> data(airquality) > airhist<-hist(airquality$Ozone) > curve(40-(x/3.3+1),from=0,to=120,add=T) > curve(6.6-(x/30),from=120,to=180,add=T)
This might impress an uncritical audience, but it is completely fabricated. When you are at a loss for what the underlying distribution might be, it may be better to just smooth the data and plot the result.
> airhist<-hist(airquality$Ozone) > airspline<-spline(airhist$counts) > lines(rescale(airspline$x,range(airhist$mids)),airspline$y)
There are a number of smoothing algorithms available in R, including
spline()
. Producing smoothed curves for histogram()
or barplot()
is a common problem, partly because the horizontal
axis on these plots is not scaled in an obvious way. As you can see,
histogram()
returns a list that contains the midpoints of the bars,
as does barplot()
. The function rescale() does a simple linear transformation of one
vector of values into a new scale. In this case, the scaling was by about a
factor of 20.
For more information, see An Introduction to R: Examining the distribution of a set of data.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.