I have some geometrically distributed data. When I want to take a look at it, I use

sns.distplot(data, kde=False, norm_hist=True, bins=100)

which results is a picture:

Plot 1a

However, bins heights don't add up to 1, which means y axis doesn't show probability, it's something different. If instead we use

weights = np.ones_like(np.array(data))/float(len(np.array(data)))
plt.hist(data, weights=weights, bins = 100)

the y axis shall show probability, as bins heights sum up to 1:

Plot 1b

It can be seen more clearly here: suppose we have a list

l = [1, 3, 2, 1, 3]

We have two 1s, two 3s and one 2, so their respective probabilities are 2/5, 2/5 and 1/5. When we use seaborn histplot with 3 bins:

sns.distplot(l, kde=False, norm_hist=True, bins=3)

we get:

Plot 2a

As you can see, the 1st and the 3rd bin sum up to 0.6+0.6=1.2 which is already greater than 1, so y axis is not a probability. When we use

weights = np.ones_like(np.array(l))/float(len(np.array(l)))
plt.hist(l, weights=weights, bins = 3)

we get:

enter image description here

and the y axis is probability, as 0.4+0.4+0.2=1 as expected.

The amount of bins in these 2 cases are is the same for both methods used in each case: 100 bins for geometrically distributed data, 3 bins for small array l with 3 possible values. So bins amount is not the issue.

My question is: in seaborn distplot called with norm_hist=True, what is the meaning of y axis?


From the documentation:

norm_hist : bool, optional

If True, the histogram height shows a density rather than a count. This is implied if a KDE or fitted density is plotted.

So you need to take into account your bin width as well, i.e. compute the area under the curve and not just the sum of the bin heights.

  • 5
    As I was just going to write the same, here the numbers for the second example: The bin width is l=(3-1)/3=0.6666... and the sum over the the areas of the histogram bins is s=(0.6+0.3+0.6)*l=1, so in that sense the normalisation is right. Aug 3 '18 at 7:25
  • 9
    @IonicSolutions thanks, I read the documentation before but never understood what that means. It's strange though that seaborn or matplotlib don't provide an out-of-the-box plot "x value vs probability" where every bin is a distinct value and y axis measures probability of that value, all probabilities summed up to 1. It would be a very useful plot, do we really need to do that manually like I did here?... Aug 3 '18 at 20:51
  • @MisterTwister open a new question
    – borgr
    Sep 25 '18 at 11:58
  • 2
    If you still don't want it to sum to 1, add weights. However, it will not work if you add KDE, as KDE forces norm_hist=True and overrides your weights! So no way to have both KDE and sum to 1.
    – MattS
    Sep 16 '19 at 15:15
  • 2
    MattS is right, KDE default is True , need set KDE=False, norm_hist=False
    – Mithril
    Mar 19 '20 at 2:43

The x-axis is the value of the variable just like in a histogram, but what exactly does the y-axis represent?

ANS-> The y-axis in a density plot is the probability density function for the kernel density estimation. However, we need to be careful to specify this is a probability density and not a probability. The difference is the probability density is the probability per unit on the x-axis. To convert to an actual probability, we need to find the area under the curve for a specific interval on the x-axis. Somewhat confusingly, because this is a probability density and not a probability, the y-axis can take values greater than one. The only requirement of the density plot is that the total area under the curve integrates to one. I generally tend to think of the y-axis on a density plot as a value only for relative comparisons between different categories.

from the reference of https://towardsdatascience.com/histograms-and-density-plots-in-python-f6bda88f5ac0

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