pylab.hist(data, normed=1). Normalization seems to work incorrect

I'm trying to create a histogram with argument normed=1

For instance:

``````import pylab

data = ([1,1,2,3,3,3,3,3,4,5.1])
pylab.hist(data, normed=1)
pylab.show()
``````

I expected that the sum of the bins would be 1. But instead, one of the bin is bigger then 1. What this normalization did? And how to create a histogram with such normalization that the integral of the histogram would be equal 1?

-
Also try `pylab.hist(data, bins=5, range=(1, 6), normed=1)`. This will result in a bin width of 1. –  Sven Marnach Mar 31 '11 at 11:22

According to documentation normed: If True, the result is the value of the probability density function at the bin, normalized such that the integral over the range is 1. Note that the sum of the histogram values will not be equal to 1 unless bins of unity width are chosen; it is not a probability mass function. This is from numpy doc, but should be the same for pylab.

``````In []: data= array([1,1,2,3,3,3,3,3,4,5.1])
In []: counts, bins= histogram(data, normed= True)
In []: counts
Out[]: array([ 0.488,  0.,  0.244,  0.,  1.22,  0.,  0.,  0.244,  0.,  0.244])
In []: sum(counts* diff(bins))
Out[]: 0.99999999999999989
``````

So simply normalization is done according to the documentation like:

``````In []: counts, bins= histogram(data, normed= False)
In []: counts
Out[]: array([2, 0, 1, 0, 5, 0, 0, 1, 0, 1])
In []: counts_n= counts/ sum(counts* diff(bins))
In []: counts_n
Out[]: array([ 0.488,  0.,  0.244,  0.,  1.22 ,  0.,  0.,  0.244,  0.,  0.244])
``````
-
@smirnoffs: What is your argument that it can't be higher than 1? Thanks –  eat Mar 31 '11 at 10:18
@eat Normalized histogram, as I understood it, is a probability density function. Probability can't be more than 1. –  smirnoffs Mar 31 '11 at 12:32
@smirnoffs: can you provide some links to backup your definition of normalized histogram? FWIW it's totally obvious from the docs how the normalization works. `counts* diff(bins)` gives you what you are looking for. Thanks –  eat Mar 31 '11 at 13:35
Probability densities can be anything non-negative as long as the integral (not the sum) over the range is equal to 1. –  Robert Kern Mar 31 '11 at 15:50
@robert-kern You are probably right. Might be it's my misunderstanding. What exactly the width of the bin means in that case? –  smirnoffs Apr 1 '11 at 6:43

See my other post for how to make the sum of all bins in a histogram equal to one: http://stackoverflow.com/a/16399202/1542814

Copy & Paste:

``````weights = np.ones_like(myarray)/len(myarray)
plt.hist(myarray, weights=weights)
``````

where myarray contains your data

-
This is the best way to do it if you're doing frequency histograms! –  Lucidnonsense Apr 26 '14 at 10:42
FYI, make sure to keep `normed=0` if you are using the above method. –  Pushpendre Jan 24 at 13:57

I think you are confusing bin heights with bin contents. You need to add the contents of each bin, i.e. height*width for all bins. That should = 1.

-

I had the same problem, and while solving it another problem came up: how to plot the the normalised bin frequences as percentages with ticks on rounded values. I'm posting it here in case it is useful for anyone. In my example I chose 10% (0.1) as the maximum value for the y axis, and 10 steps (one from 0% to 1%, one from 1% to 2%, and so on). The trick is to set the ticks at the data counts (which are the output list `n` of the `plt.hist`) that will next be transformed into percentages using the `FuncFormatter` class. Here's what I did:

``````import matplotlib.pyplot as plt
from matplotlib.ticker import FuncFormatter

fig, ax = plt.subplots()

# The required parameters
num_steps = 10
max_percentage = 0.1
num_bins = 40

# Calculating the maximum value on the y axis and the yticks
max_val = max_percentage * len(data)
step_size = max_val / num_steps
yticks = [ x * step_size for x in range(0, num_steps+1) ]
ax.set_yticks( yticks )
plt.ylim(0, max_val)

# Running the histogram method
n, bins, patches = plt.hist(data, num_bins)

# To plot correct percentages in the y axis
to_percentage = lambda y, pos: str(round( ( y / float(len(data)) ) * 100.0, 2)) + '%'
plt.gca().yaxis.set_major_formatter(FuncFormatter(to_percentage))

plt.show()
``````

Plots

Before normalisation: the y axis unit is number of samples within the bin intervals in the x axis:

After normalisation: the y axis unit is frequency of the bin values as a percentage over all the samples

-

There is also an analogue in numpy - `numpy.historgram`: http://docs.scipy.org/doc/numpy/reference/generated/numpy.histogram.html One of the parameters is "density", If you set `density=True`, the output will be normalised.

normed : bool, optional This keyword is deprecated in Numpy 1.6 due to confusing/buggy behavior. It will be removed in Numpy 2.0. Use the density keyword instead. If False, the result will contain the number of samples in each bin. If True, the result is the value of the probability density function at the bin, normalized such that the integral over the range is 1. Note that this latter behavior is known to be buggy with unequal bin widths; use density instead.

density : bool, optional If False, the result will contain the number of samples in each bin. If True, the result is the value of the probability density function at the bin, normalized such that the integral over the range is 1. Note that the sum of the histogram values will not be equal to 1 unless bins of unity width are chosen; it is not a probability mass function. Overrides the normed keyword if given.

-