Curve the Kernel Density Estimate (KDE) in seaborn displot

Question:

When I try to plot my data in the form of histogram using seaborn displot:

plot = sns.displot(
    data=z, kde=True, kind="hist", bins=3000, legend=True, aspect=1.8
).set(title='Error Distribution')

The curve for KDE is plotted in the form of straight lines instead of curves like here:
Error Distribution
Is there a way to make the KDE lines cover all the bins of the histogram in a curved manner?

Asked By: Raghav Arora

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Answers:

Instead of zooming in, you could use the bins to restrict to a certain range (via binrange=...). To limit the range of the kde, you can use the clip keyword. Here is an example, first without setting the range:

from matplotlib import pyplot as plt
import seaborn as sns
import pandas as pd
import numpy as np

# first, create some test data
slatm = np.random.normal(-.9, .4, size=(10000, 10)).max(axis=1)
split = np.random.normal(-.1, .1, size=(10000, 10)).max(axis=1)
split[0] = 200  # ad an extreme far value to the dataset
z = pd.DataFrame({'slatm': slatm, 'split': split})

g = sns.displot(data=z, kde=True, kind="hist", bins=3000, legend=True, aspect=1.8)
g.set(title='Error Distribution')
g.ax.set_xlim(-1, 0.5) # zoom in via the x limits

displot with zooming in

Here is how it would look with limiting the ranges for the histogram and the kde:

min_x, max_x = -1, 0.5
g = sns.displot(data=z, kde=True, kind="hist", bins=30, binrange=(min_x, max_x), legend=True, aspect=1.8,
                kde_kws={'clip': (min_x, max_x)})
g.set(title='Error Distribution')

sns.displot with limiting the ranges

Answered By: JohanC
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