# How can I plot a histogram such that the heights of the bars sum to 1 in matplotlib?

I'd like to plot a normalized histogram from a vector using matplotlib. I tried the following:

``````plt.hist(myarray, normed=True)
``````

as well as:

``````plt.hist(myarray, normed=1)
``````

but neither option produces a y-axis from [0, 1] such that the bar heights of the histogram sum to 1. I'd like to produce such a histogram -- how can I do it?

• I know this is old, but for future reference & anyone who visits this page, this kind of axis spread is called a "probability density" axis! – ChristineB Jun 30 '16 at 17:24

## 4 Answers

It would be more helpful if you posed a more complete working (or in this case non-working) example.

I tried the following:

``````import numpy as np
import matplotlib.pyplot as plt

x = np.random.randn(1000)

fig = plt.figure()
ax = fig.add_subplot(111)
n, bins, rectangles = ax.hist(x, 50, density=True)
fig.canvas.draw()
plt.show()
``````

This will indeed produce a bar-chart histogram with a y-axis that goes from `[0,1]`.

Further, as per the `hist` documentation (i.e. `ax.hist?` from `ipython`), I think the sum is fine too:

``````*normed*:
If *True*, the first element of the return tuple will
be the counts normalized to form a probability density, i.e.,
``n/(len(x)*dbin)``.  In a probability density, the integral of
the histogram should be 1; you can verify that with a
trapezoidal integration of the probability density function::

pdf, bins, patches = ax.hist(...)
print np.sum(pdf * np.diff(bins))
``````

Giving this a try after the commands above:

``````np.sum(n * np.diff(bins))
``````

I get a return value of `1.0` as expected. Remember that `normed=True` doesn't mean that the sum of the value at each bar will be unity, but rather than the integral over the bars is unity. In my case `np.sum(n)` returned approx `7.2767`.

• Yep, that's a probability density graph, I think he wants a probability mass graph. – NoName Jan 8 '20 at 14:48

If you want the sum of all bars to be equal unity, weight each bin by the total number of values:

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

Hope that helps, although the thread is quite old...

Note for Python 2.x: add casting to `float()` for one of the operators of the division as otherwise you would end up with zeros due to integer division

• Great answer. Note that if myarray is a python `array_like` rather than a numpy array you will need to cast `len(myarray)` to `float`. – cmh Jul 17 '13 at 12:54
• Also if myarray is multidimensional & you're only using one dimension, such as myarray[0,:], then you can swap out len(myarray) with np.size(myarray[0,:]) and that'll work the same way. (Otherwise, it says the object isn't callable.) – ChristineB Jun 30 '16 at 17:18

I know this answer is too late considering the question is dated 2010 but I came across this question as I was facing a similar problem myself. As already stated in the answer, normed=True means that the total area under the histogram is equal to 1 but the sum of heights is not equal to 1. However, I wanted to, for convenience of physical interpretation of a histogram, make one with sum of heights equal to 1.

I found a hint in the following question - Python: Histogram with area normalized to something other than 1

But I was not able to find a way of making bars mimic the histtype="step" feature hist(). This diverted me to : Matplotlib - Stepped histogram with already binned data

If the community finds it acceptable I should like to put forth a solution which synthesises ideas from both the above posts.

``````import matplotlib.pyplot as plt

# Let X be the array whose histogram needs to be plotted.
nx, xbins, ptchs = plt.hist(X, bins=20)
plt.clf() # Get rid of this histogram since not the one we want.

nx_frac = nx/float(len(nx)) # Each bin divided by total number of objects.
width = xbins - xbins # Width of each bin.
x = np.ravel(zip(xbins[:-1], xbins[:-1]+width))
y = np.ravel(zip(nx_frac,nx_frac))

plt.plot(x,y,linestyle="dashed",label="MyLabel")
#... Further formatting.
``````

This has worked wonderfully for me though in some cases I have noticed that the left most "bar" or the right most "bar" of the histogram does not close down by touching the lowest point of the Y-axis. In such a case adding an element 0 at the begging or the end of y achieved the necessary result.

Just thought I'd share my experience. Thank you.

• i think you need normed=True as well in plt.hist. Also in Python 3 you have to use list(zip(...)). – Sebastian Schmitz Aug 4 '14 at 14:24

Here is another simple solution using `np.histogram()` method.

``````myarray = np.random.random(100)
results, edges = np.histogram(myarray, normed=True)
binWidth = edges - edges
plt.bar(edges[:-1], results*binWidth, binWidth)
``````

You can indeed check that the total sums up to 1 with:

``````> print sum(results*binWidth)
1.0
``````