# How can I plot with 2 different y-axes?

I would like superimpose two scatter plots in R so that each set of points has its own (different) y-axis (i.e., in positions 2 and 4 on the figure) but the points appear superimposed on the same figure.

Is it possible to do this with `plot`?

Edit Example code showing the problem

``````# example code for SO question
y1 <- rnorm(10, 100, 20)
y2 <- rnorm(10, 1, 1)
x <- 1:10
# in this plot y2 is plotted on what is clearly an inappropriate scale
plot(y1 ~ x, ylim = c(-1, 150))
points(y2 ~ x, pch = 2)
``````
• Please provide sample data. This is generally a bad idea from an aesthetic perspective. – Chase May 26 '11 at 17:55
• answers and discussion in the specific case of `ggplot2`: stackoverflow.com/questions/3099219/… (searching SO for `[r] two y-axes` or `[r] twoord.plot`) -- there are a few other related answers, although (to my surprise since it's an R FAQ) nothing identical – Ben Bolker May 26 '11 at 18:17
• @chase - I added a working example of the problem. Thanks for the warning on the aesthetic issues. – DQdlM May 26 '11 at 18:44

update: Copied material that was on the R wiki at http://rwiki.sciviews.org/doku.php?id=tips:graphics-base:2yaxes, link now broken: also available from the wayback machine

## Two different y axes on the same plot

(some material originally by Daniel Rajdl 2006/03/31 15:26)

Please note that there are very few situations where it is appropriate to use two different scales on the same plot. It is very easy to mislead the viewer of the graphic. Check the following two examples and comments on this issue (example1, example2 from Junk Charts), as well as this article by Stephen Few (which concludes “I certainly cannot conclude, once and for all, that graphs with dual-scaled axes are never useful; only that I cannot think of a situation that warrants them in light of other, better solutions.”) Also see point #4 in this cartoon ...

If you are determined, the basic recipe is to create your first plot, set `par(new=TRUE)` to prevent R from clearing the graphics device, creating the second plot with `axes=FALSE` (and setting `xlab` and `ylab` to be blank – `ann=FALSE` should also work) and then using `axis(side=4)` to add a new axis on the right-hand side, and `mtext(...,side=4)` to add an axis label on the right-hand side. Here is an example using a little bit of made-up data:

``````set.seed(101)
x <- 1:10
y <- rnorm(10)
## second data set on a very different scale
z <- runif(10, min=1000, max=10000)
par(mar = c(5, 4, 4, 4) + 0.3)  # Leave space for z axis
plot(x, y) # first plot
par(new = TRUE)
plot(x, z, type = "l", axes = FALSE, bty = "n", xlab = "", ylab = "")
axis(side=4, at = pretty(range(z)))
mtext("z", side=4, line=3)
``````

`twoord.plot()` in the `plotrix` package automates this process, as does `doubleYScale()` in the `latticeExtra` package.

Another example (adapted from an R mailing list post by Robert W. Baer):

``````## set up some fake test data
time <- seq(0,72,12)
betagal.abs <- c(0.05,0.18,0.25,0.31,0.32,0.34,0.35)
cell.density <- c(0,1000,2000,3000,4000,5000,6000)

## add extra space to right margin of plot within frame
par(mar=c(5, 4, 4, 6) + 0.1)

## Plot first set of data and draw its axis
plot(time, betagal.abs, pch=16, axes=FALSE, ylim=c(0,1), xlab="", ylab="",
type="b",col="black", main="Mike's test data")
axis(2, ylim=c(0,1),col="black",las=1)  ## las=1 makes horizontal labels
mtext("Beta Gal Absorbance",side=2,line=2.5)
box()

## Allow a second plot on the same graph
par(new=TRUE)

## Plot the second plot and put axis scale on right
plot(time, cell.density, pch=15,  xlab="", ylab="", ylim=c(0,7000),
axes=FALSE, type="b", col="red")
## a little farther out (line=4) to make room for labels
mtext("Cell Density",side=4,col="red",line=4)
axis(4, ylim=c(0,7000), col="red",col.axis="red",las=1)

## Draw the time axis
axis(1,pretty(range(time),10))
mtext("Time (Hours)",side=1,col="black",line=2.5)

legend("topleft",legend=c("Beta Gal","Cell Density"),
text.col=c("black","red"),pch=c(16,15),col=c("black","red"))
`````` Similar recipes can be used to superimpose plots of different types – bar plots, histograms, etc..

• this is why link-only answers are a bad idea ... wiki.r-project.org appears defunct, I'm asking on r-devel@r-project.org. – Ben Bolker Sep 5 '14 at 22:31
• @BenBolker your solution is genius! however i have one question. If it's more than one line on the both sides, I am still able to use this method but only with symbols. When I try to use line=plot, it tries to plot them continuously. Would you happen to suggest a trick to fix this? – wthimdh Jan 23 '17 at 22:24
• @BenBolker What if Time is date format of type: "2019-01-01". How will you change the `axis(1,pretty(range(time),10))` line? – k.dkhk Aug 9 '19 at 14:04

As its name suggests, `twoord.plot()` in the plotrix package plots with two ordinate axes.

``````library(plotrix)
example(twoord.plot)
``````     • slick. thanks for the truck load of examples. I'd love to see one of those line and bar examples with negative values as well. Also stacking would be nice. – Matt Bannert Jul 15 '16 at 20:08

One option is to make two plots side by side. `ggplot2` provides a nice option for this with `facet_wrap()`:

``````dat <- data.frame(x = c(rnorm(100), rnorm(100, 10, 2))
, y = c(rnorm(100), rlnorm(100, 9, 2))
, index = rep(1:2, each = 100)
)

require(ggplot2)
ggplot(dat, aes(x,y)) +
geom_point() +
facet_wrap(~ index, scales = "free_y")
``````

If you can give up the scales/axis labels, you can rescale the data to (0, 1) interval. This works for example for different 'wiggle' trakcs on chromosomes, when you're generally interested in local correlations between the tracks and they have different scales (coverage in thousands, Fst 0-1).

``````# rescale numeric vector into (0, 1) interval
# clip everything outside the range
rescale <- function(vec, lims=range(vec), clip=c(0, 1)) {
# find the coeficients of transforming linear equation
# that maps the lims range to (0, 1)
slope <- (1 - 0) / (lims - lims)
intercept <- - slope * lims

xformed <- slope * vec + intercept

# do the clipping
xformed[xformed < 0] <- clip
xformed[xformed > 1] <- clip

xformed
}
``````

Then, having a data frame with `chrom`, `position`, `coverage` and `fst` columns, you can do something like:

``````ggplot(d, aes(position)) +
geom_line(aes(y = rescale(fst))) +
geom_line(aes(y = rescale(coverage))) +
facet_wrap(~chrom)
``````

The advantage of this is that you're not limited to two trakcs.

I too suggests, `twoord.stackplot()` in the `plotrix` package plots with more of two ordinate axes.

``````data<-read.table(text=
"e0AL fxAL e0CO fxCO e0BR fxBR anos
51.8  5.9 50.6  6.8 51.0  6.2 1955
54.7  5.9 55.2  6.8 53.5  6.2 1960
57.1  6.0 57.9  6.8 55.9  6.2 1965
59.1  5.6 60.1  6.2 57.9  5.4 1970
61.2  5.1 61.8  5.0 59.8  4.7 1975
63.4  4.5 64.0  4.3 61.8  4.3 1980
65.4  3.9 66.9  3.7 63.5  3.8 1985
67.3  3.4 68.0  3.2 65.5  3.1 1990
69.1  3.0 68.7  3.0 67.5  2.6 1995
70.9  2.8 70.3  2.8 69.5  2.5 2000
72.4  2.5 71.7  2.6 71.1  2.3 2005
73.3  2.3 72.9  2.5 72.1  1.9 2010
74.3  2.2 73.8  2.4 73.2  1.8 2015
75.2  2.0 74.6  2.3 74.2  1.7 2020
76.0  2.0 75.4  2.2 75.2  1.6 2025
76.8  1.9 76.2  2.1 76.1  1.6 2030
77.6  1.9 76.9  2.1 77.1  1.6 2035
78.4  1.9 77.6  2.0 77.9  1.7 2040
79.1  1.8 78.3  1.9 78.7  1.7 2045
79.8  1.8 79.0  1.9 79.5  1.7 2050
80.5  1.8 79.7  1.9 80.3  1.7 2055
81.1  1.8 80.3  1.8 80.9  1.8 2060
81.7  1.8 80.9  1.8 81.6  1.8 2065
82.3  1.8 81.4  1.8 82.2  1.8 2070
82.8  1.8 82.0  1.7 82.8  1.8 2075
83.3  1.8 82.5  1.7 83.4  1.9 2080
83.8  1.8 83.0  1.7 83.9  1.9 2085
84.3  1.9 83.5  1.8 84.4  1.9 2090
84.7  1.9 83.9  1.8 84.9  1.9 2095
85.1  1.9 84.3  1.8 85.4  1.9 2100", header=T)

require(plotrix)
twoord.stackplot(lx=data\$anos, rx=data\$anos,
ldata=cbind(data\$e0AL, data\$e0BR, data\$e0CO),
rdata=cbind(data\$fxAL, data\$fxBR, data\$fxCO),
lcol=c("black","red", "blue"),
rcol=c("black","red", "blue"),
ltype=c("l","o","b"),
rtype=c("l","o","b"),
lylab="Años de Vida", rylab="Hijos x Mujer",
xlab="Tiempo",
border="grey80")
legend("bottomright", c(paste("Proy:",
c("A. Latina", "Brasil", "Colombia"))), cex=1,
col=c("black","red", "blue"), lwd=2, bty="n",
lty=c(1,1,2), pch=c(NA,1,1) )
``````

Another alternative which is similar to the accepted answer by @BenBolker is redefining the coordinates of the existing plot when adding a second set of points.

Here is a minimal example.

Data:

``````x  <- 1:10
y1 <- rnorm(10, 100, 20)
y2 <- rnorm(10, 1, 1)
``````

Plot:

``````par(mar=c(5,5,5,5)+0.1, las=1)

plot.new()
plot.window(xlim=range(x), ylim=range(y1))
points(x, y1, col="red", pch=19)
axis(1)
axis(2, col.axis="red")
box()

plot.window(xlim=range(x), ylim=range(y2))
points(x, y2, col="limegreen", pch=19)
axis(4, col.axis="limegreen")
`````` 