# Getting frequency values from histogram in R

I know how to draw histograms or other frequency/percentage related tables. But now I want to know, how can I get those frequency values in a table to use after the fact.

I have a massive dataset, now I draw a histogram with a set binwidth. I want to extract the frequency value (i.e. value on y-axis) that corresponds to each binwidth and save it somewhere.

The `hist` function has a return value (an object of class `histogram`):

``````R> res <- hist(rnorm(100))
R> res
\$breaks
 -4 -3 -2 -1  0  1  2  3  4

\$counts
  1  2 17 27 34 16  2  1

\$intensities
 0.01 0.02 0.17 0.27 0.34 0.16 0.02 0.01

\$density
 0.01 0.02 0.17 0.27 0.34 0.16 0.02 0.01

\$mids
 -3.5 -2.5 -1.5 -0.5  0.5  1.5  2.5  3.5

\$xname
 "rnorm(100)"

\$equidist
 TRUE

attr(,"class")
 "histogram"
``````
• Aaaah, just got the same idea and wanted to post this! You were faster :-) – TMS Oct 12 '11 at 13:21
• You shall also note that he should use `plot = FALSE`, so that he only gets results without plotting the histogram. – TMS Oct 12 '11 at 13:24
• is there a way without hist? I am trying to make hist with custom breaks and it doesn't work. Could there be something else? – xealits Dec 15 '14 at 18:49
• @xealits: `table(cut(rnorm(100), breaks=c(-Inf, -1, 1, Inf)))` – rcs Dec 15 '14 at 19:59

From `?hist`: Value

an object of class "histogram" which is a list with components:

• breaks the n+1 cell boundaries (= breaks if that was a vector). These are the nominal breaks, not with the boundary fuzz.
• counts n integers; for each cell, the number of x[] inside.
• density values f^(x[i]), as estimated density values. If all(diff(breaks) == 1), they are the relative frequencies counts/n and in general satisfy sum[i; f^(x[i]) (b[i+1]-b[i])] = 1, where b[i] = breaks[i].
• intensities same as density. Deprecated, but retained for compatibility.
• mids the n cell midpoints.
• xname a character string with the actual x argument name.
• equidist logical, indicating if the distances between breaks are all the same.

`breaks` and `density` provide just about all you need:

``````histrv<-hist(x)
histrv\$breaks
histrv\$density
``````

Just in case someone hits this question with `ggplot`'s `geom_histogram` in mind, note that there is a way to extract the data from a ggplot object.

The following convenience function outputs a dataframe with the lower limit of each bin (`xmin`), the upper limit of each bin (`xmax`), the mid-point of each bin (`x`), as well as the frequency value (`y`).

``````## Convenience function
get_hist <- function(p) {
d <- ggplot_build(p)\$data[]
data.frame(x = d\$x, xmin = d\$xmin, xmax = d\$xmax, y = d\$y)
}

# make a dataframe for ggplot
set.seed(1)
x = runif(100, 0, 10)
y = cumsum(x)
df <- data.frame(x = sort(x), y = y)

# make geom_histogram
p <- ggplot(data = df, aes(x = x)) +
geom_histogram(aes(y = cumsum(..count..)), binwidth = 1, boundary = 0,
color = "black", fill = "white")
``````

Illustration:

``````hist = get_hist(p)