I know how to create a histogram (just use "with boxes") in gnuplot if my .dat file already has properly binned data. Is there a way to take a list of numbers and have gnuplot provide a histogram based on ranges and bin sizes the user provides?

2If you don't get an answer there are other tools which are meant to do such things. I use Root (root.cern.ch) many others around here use R, and there are at least a few other options.– dmckee  exmoderator kittenCommented Mar 18, 2010 at 17:15

1Bin is the range of values collected together for each bar in the histogram. Each bin has a lower and upper limit, and all the data with a value in that range gets counted towards that bar. Binned means that my data file is already organized by how many data points fall within each bin so it's ready to be plotted as a histogram.– maryCommented Jun 27, 2018 at 18:59
10 Answers
yes, and its quick and simple though very hidden:
binwidth=5
bin(x,width)=width*floor(x/width)
plot 'datafile' using (bin($1,binwidth)):(1.0) smooth freq with boxes
check out help smooth freq
to see why the above makes a histogram
to deal with ranges just set the xrange variable.

14I think @ChrisW's answer below brings an important point to notice for anyone who wants to make a Histogram in Gnuplot.– AbhinavCommented Oct 26, 2013 at 2:49

4Be very careful, this only works if there is no "missing" bin in the set... This function fixes the yvalue of a missing bin to the yvalue of the previous nonmissing bin. This can be very misleading!!! Commented Nov 5, 2017 at 21:06

1I would add
set boxwidth binwidth
to above. It was really helpful for me.– JaakkoCommented Feb 10, 2020 at 7:39
I have a couple corrections/additions to Born2Smile's very useful answer:
 Empty bins caused the box for the adjacent bin to incorrectly extend into its space; avoid this using
set boxwidth binwidth
 In Born2Smile's version, bins are rendered as centered on their lower bound. Strictly they ought to extend from the lower bound to the upper bound. This can be corrected by modifying the
bin
function:bin(x,width)=width*floor(x/width) + width/2.0

10Actually that second part should be
bin(x,width)=width*floor(x/width) + binwidth/2.0
(floating point calculations)– bgwCommented Aug 29, 2010 at 18:33 
9You mean
bin(x,width)=width*floor(x/width) + width/2.0
. If we are passingwidth
as an argument, then use it. :)– MitarCommented May 15, 2013 at 23:49
Be very careful: all of the answers on this page are implicitly taking the decision of where the binning starts  the lefthand edge of the leftmost bin, if you like  out of the user's hands. If the user is combining any of these functions for binning data with his/her own decision about where binning starts (as is done on the blog which is linked to above) the functions above are all incorrect. With an arbitrary starting point for binning 'Min', the correct function is:
bin(x) = width*(floor((xMin)/width)+0.5) + Min
You can see why this is correct sequentially (it helps to draw a few bins and a point somewhere in one of them). Subtract Min from your data point to see how far into the binning range it is. Then divide by binwidth so that you're effectively working in units of 'bins'. Then 'floor' the result to go to the lefthand edge of that bin, add 0.5 to go to the middle of the bin, multiply by the width so that you're no longer working in units of bins but in an absolute scale again, then finally add back on the Min offset you subtracted at the start.
Consider this function in action:
Min = 0.25 # where binning starts
Max = 2.25 # where binning ends
n = 2 # the number of bins
width = (MaxMin)/n # binwidth; evaluates to 1.0
bin(x) = width*(floor((xMin)/width)+0.5) + Min
e.g. the value 1.1 truly falls in the left bin:
 this function correctly maps it to the centre of the left bin (0.75);
 Born2Smile's answer, bin(x)=width*floor(x/width), incorrectly maps it to 1;
 mas90's answer, bin(x)=width*floor(x/width) + binwidth/2.0, incorrectly maps it to 1.5.
Born2Smile's answer is only correct if the bin boundaries occur at (n+0.5)*binwidth (where n runs over integers). mas90's answer is only correct if the bin boundaries occur at n*binwidth.

Tip: Set
Min
andMax
to floating point values to use floating point math. I tried using integers and gotx range is invalid
, becausebinwidth
was rounded down to zero. Commented Feb 6 at 19:58
Do you want to plot a graph like this one? yes? Then you can have a look at my blog article: http://gnuplotsurprising.blogspot.com/2011/09/statisticanalysisandhistogram.html
Key lines from the code:
n=100 #number of intervals
max=3. #max value
min=3. #min value
width=(maxmin)/n #interval width
#function used to map a value to the intervals
hist(x,width)=width*floor(x/width)+width/2.0
set boxwidth width*0.9
set style fill solid 0.5 # fill style
#count and plot
plot "data.dat" u (hist($1,width)):(1.0) smooth freq w boxes lc rgb"green" notitle

This article helped me to get started with Gnuplot. Thanks! I had to terminate every line with a semicolon to avoid errors like this:
line 4: unexpected or unrecognized token
. Commented Sep 2, 2023 at 21:22
As usual, Gnuplot is a fantastic tool for plotting sweet looking graphs and it can be made to perform all sorts of calculations. However, it is intended to plot data rather than to serve as a calculator and it is often easier to use an external programme (e.g. Octave) to do the more "complicated" calculations, save this data in a file, then use Gnuplot to produce the graph. For the above problem, check out the "hist" function is Octave using [freq,bins]=hist(data)
, then plot this in Gnuplot using
set style histogram rowstacked gap 0
set style fill solid 0.5 border lt 1
plot "./data.dat" smooth freq with boxes
I have found this discussion extremely useful, but I have experienced some "rounding off" problems.
More precisely, using a binwidth of 0.05, I have noticed that, with the techniques presented here above, data points which read 0.1 and 0.15 fall in the same bin. This (obviously unwanted behaviour) is most likely due to the "floor" function.
Hereafter is my small contribution to try to circumvent this.
bin(x,width,n)=x<=n*width? width*(n1) + 0.5*binwidth:bin(x,width,n+1)
binwidth = 0.05
set boxwidth binwidth
plot "data.dat" u (bin($1,binwidth,1)):(1.0) smooth freq with boxes
This recursive method is for x >=0; one could generalise this with more conditional statements to obtain something even more general.
We do not need to use recursive method, it may be slow. My solution is using a userdefined function rint instesd of instrinsic function int or floor.
rint(x)=(xint(x)>0.9999)?int(x)+1:int(x)
This function will give rint(0.0003/0.0001)=3
, while int(0.0003/0.0001)=floor(0.0003/0.0001)=2
.
Why? Please look at Perl int function and padding zeros
I have a little modification to Born2Smile's solution.
I know that doesn't make much sense, but you may want it just in case. If your data is integer and you need a float bin size (maybe for comparison with another set of data, or plot density in finer grid), you will need to add a random number between 0 and 1 inside floor. Otherwise, there will be spikes due to round up error. floor(x/width+0.5)
will not do because it will create pattern that's not true to original data.
binwidth=0.3
bin(x,width)=width*floor(x/width+rand(0))

1You haven't encountered such situations, but you may later. You can tested it with normally distributed integers with a float sd and plot histograms with bin=1, and bin=s.d. See what you get with and without the rand(0) trick. I caught a collaborator's mistake when reviewing his manuscript. His results changed from absolutely nonsense to a beautiful figure as expected.– path4Commented Feb 27, 2014 at 5:07

Ok, maybe the explanation is so short, that one cannot understand it without a more concrete test case. I'll make a short edit of your answer so that I can undo the downvote ;) Commented Feb 27, 2014 at 8:14

Consider integers of normal distribution. Since they are integers, many of them will have the same x/width. Let's say that number is 1.3. With floor(x/width+0.5), all of them will be assigned to bin 1. But what 1.3 really means in terms of density is that 70% of them should be in bin 1 and 30% in bin 2. rand(0) keeps the proper density. So, 0.5 creates spikes and rand(0) keeps it true. I bet the figure by hsxz will be much smoother using rand(0) instead of 0.5. It's not just rounding up, it's rounding up without perturbation.– path4Commented Feb 28, 2014 at 5:08
With respect to binning functions, I didn't expect the result of the functions offered so far. Namely, if my binwidth is 0.001, these functions were centering the bins on 0.0005 points, whereas I feel it's more intuitive to have the bins centered on 0.001 boundaries.
In other words, I'd like to have
Bin 0.001 contain data from 0.0005 to 0.0014
Bin 0.002 contain data from 0.0015 to 0.0024
...
The binning function I came up with is
my_bin(x,width) = width*(floor(x/width+0.5))
Here's a script to compare some of the offered bin functions to this one:
rint(x) = (xint(x)>0.9999)?int(x)+1:int(x)
bin(x,width) = width*rint(x/width) + width/2.0
binc(x,width) = width*(int(x/width)+0.5)
mitar_bin(x,width) = width*floor(x/width) + width/2.0
my_bin(x,width) = width*(floor(x/width+0.5))
binwidth = 0.001
data_list = "0.1386 0.1383 0.1375 0.0015 0.0005 0.0005 0.0015 0.1375 0.1383 0.1386"
my_line = sprintf("%7s %7s %7s %7s %7s","data","bin()","binc()","mitar()","my_bin()")
print my_line
do for [i in data_list] {
iN = i + 0
my_line = sprintf("%+.4f %+.4f %+.4f %+.4f %+.4f",iN,bin(iN,binwidth),binc(iN,binwidth),mitar_bin(iN,binwidth),my_bin(iN,binwidth))
print my_line
}
and here's the output
data bin() binc() mitar() my_bin()
0.1386 0.1375 0.1375 0.1385 0.1390
0.1383 0.1375 0.1375 0.1385 0.1380
0.1375 0.1365 0.1365 0.1375 0.1380
0.0015 0.0005 0.0005 0.0015 0.0010
0.0005 +0.0005 +0.0005 0.0005 +0.0000
+0.0005 +0.0005 +0.0005 +0.0005 +0.0010
+0.0015 +0.0015 +0.0015 +0.0015 +0.0020
+0.1375 +0.1375 +0.1375 +0.1375 +0.1380
+0.1383 +0.1385 +0.1385 +0.1385 +0.1380
+0.1386 +0.1385 +0.1385 +0.1385 +0.1390
Different number of bins on the same dataset can reveal different features of the data.
Unfortunately, there is no universal best method that can determine the number of bins.
One of the powerful methods is the Freedman–Diaconis rule, which automatically determines the number of bins based on statistics of a given dataset, among many other alternatives.
Accordingly, the following can be used to utilise the Freedman–Diaconis rule in a gnuplot
script:
Say you have a file containing a single column of samples, samplesFile
:
# samples
0.12345
1.23232
...
The following (which is based on ChrisW's answer) may be embed into an existing gnuplot
script:
...
## preceeding gnuplot commands
...
#
samples="$samplesFile"
stats samples nooutput
N = floor(STATS_records)
samplesMin = STATS_min
samplesMax = STATS_max
# Freedman–Diaconis formula for binwidth size estimation
lowQuartile = STATS_lo_quartile
upQuartile = STATS_up_quartile
IQR = upQuartile  lowQuartile
width = 2*IQR/(N**(1.0/3.0))
bin(x) = width*(floor((xsamplesMin)/width)+0.5) + samplesMin
plot \
samples u (bin(\$1)):(1.0/(N*width)) t "Output" w l lw 1 smooth freq