# Histogram with Logarithmic Scale

I'm currently trying to generate a histogram in R on a logarithmic scale, but I haven't the clue where to start. I've looked on Google but none of the stuff I've seen really does what I want.

To plot the histogram I'm using:

``````hist(mydata\$V3, breaks=c(0,1,2,3,4,5,25))
``````

This gives me a histogram, but the density between 0 to 1 is so great (about a million values difference) that you can barely make out any of the other bars.

Then I've tried doing:

``````mydata_hist <- hist(mydata\$V3, breaks=c(0,1,2,3,4,5,25), plot=FALSE)
plot(rpd_hist\$counts, log="xy", pch=20, col="blue")
``````

It gives me sorta what I want, but the bottom shows me the values 1-6 rather than 0, 1, 2, 3, 4, 5, 25. Its also showing the data as a point rather than a bar. `barplot` works but then I don't get any bottom axis.

TIA,

Weegee

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A histogram is a poor-man's density estimate. Note that in your call to `hist()` using default arguments, you get frequencies not probabilities -- add `,prob=TRUE` to the call if you want probabilities.

As for the log axis problem, don't use 'x' if you do not want the x-axis transformed:

``````plot(mydata_hist\$count, log="y", type='h', lwd=10, lend=2)
``````

gets you bars on a log-y scale -- the look-and-feel is still a little different but can probably be tweaked.

Lastly, you can also do `hist(log(x), ...)` to get a histogram of the log of your data.

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Excellent! How can I modify the axis on the bottom though? Rather than showing 1, 2, 3, 4, 5, 6, I'd like to show 0 <= 1, 1 <= 2, etc. – Weegee Aug 7 '09 at 16:14
Suppressing the axis in plot() and explicit call to axis() giving the 'where' and 'what' allows you to do that. – Dirk Eddelbuettel Aug 7 '09 at 16:21
Thanks you. I think I've got it figured out. – Weegee Aug 10 '09 at 23:18

Another option would be to use the ggplot2 package.

``````ggplot(mydata, aes(x = V3)) + geom_histogram() + scale_x_log()
``````
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Note: `scale_x_log` has been renamed to `scale_x_log10` – huyz May 26 '14 at 0:36

It's not entirely clear from your question whether you want a logged x-axis or a logged y-axis. A logged y-axis is not a good idea when using bars because they are anchored at zero, which becomes negative infinity when logged. You can work around this problem by using a frequency polygon or density plot.

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Dirk's answer is a great one. If you want an appearance like what `hist` produces, you can also try this:

``````buckets <- c(0,1,2,3,4,5,25)
mydata_hist <- hist(mydata\$V3, breaks=buckets, plot=FALSE)
bp <- barplot(mydata_hist\$count, log="y", col="white", names.arg=buckets)
text(bp, mydata_hist\$counts, labels=mydata_hist\$counts, pos=1)
``````

The last line is optional, it adds value labels just under the top of each bar. This can be useful for log scale graphs, but can also be omitted.

I also pass `main`, `xlab`, and `ylab` parameters to provide a plot title, x-axis label, and y-axis label.

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I've put together a function that behaves identically to hist in the default case, but accepts the log argument. It uses several tricks from other posters, but adds a few of its own. `hist(x)` and `myhist(x)` look identical.

The original problem would be solved with:

``````myhist(mydata\$V3, breaks=c(0,1,2,3,4,5,25), log="xy")
``````

The function:

``````myhist <- function(x, ..., breaks="Sturges",
main = paste("Histogram of", xname),
xlab = xname,
ylab = "Frequency") {
xname = paste(deparse(substitute(x), 500), collapse="\n")
h = hist(x, breaks=breaks, plot=FALSE)
plot(h\$breaks, c(NA,h\$counts), type='S', main=main,
xlab=xlab, ylab=ylab, axes=FALSE, ...)
axis(1)
axis(2)
lines(h\$breaks, c(h\$counts,NA), type='s')
lines(h\$breaks, c(NA,h\$counts), type='h')
lines(h\$breaks, c(h\$counts,NA), type='h')
lines(h\$breaks, rep(0,length(h\$breaks)), type='S')
invisible(h)
}
``````

Exercise for the reader: Unfortunately, not everything that works with hist works with myhist as it stands. That should be fixable with a bit more effort, though.

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Run the hist() function without making a graph, log-transform the counts, and then draw the figure.

``````hist.data = hist(my.data, plot=F)
hist.data\$counts = log(hist.data\$counts, 2)
plot(hist.data)
``````

It should look just like the regular histogram, but the y-axis will be log2 Frequency.

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