# Add bars for standard deviation to a plot in R

For each `X`-value I calculated the average `Y`-value and the standard-deviation (`sd`) of each Y-value

``````x  = 1:5
y  = c(1.1, 1.5, 2.9, 3.8, 5.2)
sd = c(0.1, 0.3, 0.2, 0.2, 0.4)

plot (x, y)
``````

How can I add the standard-deviation as little bars to each datapoint of my plot?

-
also see `plotrix::plotCI` –  Ben Bolker Feb 25 '13 at 15:13

A Problem with csgillespie solution appears, when You have an logarithmic X axis. The you will have a different length of the small bars on the right an the left side (the epsilon follows the x-values).

You should better use the `errbar` function from the `Hmisc` package:

``````d = data.frame(
x  = c(1:5)
, y  = c(1.1, 1.5, 2.9, 3.8, 5.2)
, sd = c(0.2, 0.3, 0.2, 0.0, 0.4)
)

##install.packages("Hmisc", dependencies=T)
library("Hmisc")

plot(d\$x, d\$y, type="n")
with (
data = d
, expr = errbar(x, y, y+sd, y-sd, add=T, pch=1, cap=.1)
)

# new plot (adjusts Yrange automatically)
with (
data = d
, expr = errbar(x, y, y+sd, y-sd, add=F, pch=1, cap=.015, log="x")
)
``````
-

You can use `segments` to add the bars in base graphics. Here `epsilon` controls the line across the top and bottom of the line.

``````plot (x, y, ylim=c(0, 6))
epsilon = 0.02
for(i in 1:5) {
up = y[i] + sd[i]
low = y[i] - sd[i]
segments(x[i],low , x[i], up)
segments(x[i]-epsilon, up , x[i]+epsilon, up)
segments(x[i]-epsilon, low , x[i]+epsilon, low)
}
``````

As @thelatemail points out, I should really have used vectorised function calls:

``````segments(x, y-sd,x, y+sd)
epsilon = 0.02
segments(x-epsilon,y-sd,x+epsilon,y-sd)
segments(x-epsilon,y+sd,x+epsilon,y+sd)
``````

-

A solution with `ggplot2` :

``````qplot(x,y)+geom_errorbar(aes(x=x, ymin=y-sd, ymax=y+sd), width=0.25)
``````

-
In addition to @csgillespie's answer, `segments` is also vectorised to help with this sort of thing:
``````plot (x, y, ylim=c(0,6))