I know that seaborn.countplot
has the attribute order
which can be set to determine the order of the categories. But what I would like to do is have the categories be in order of descending count. I know that I can accomplish this by computing the count manually (using a groupby
operation on the original dataframe, etc.) but I am wondering if this functionality exists with seaborn.countplot
. Surprisingly, I cannot find an answer to this question anywhere.
2 Answers
This functionality is not built into seaborn.countplot
as far as I know - the order
parameter only accepts a list of strings for the categories, and leaves the ordering logic to the user.
This is not hard to do with value_counts()
provided you have a DataFrame though. For example,
import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt
sns.set(style='darkgrid')
titanic = sns.load_dataset('titanic')
sns.countplot(x = 'class',
data = titanic,
order = titanic['class'].value_counts().index)
plt.show()
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2
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@dax90 What miradulo said, or use the good ol' indexing
.value_counts().index[::-1]
Sep 3, 2019 at 6:15 -
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1
Most often, a seaborn countplot is not really necessary. Just plot with pandas bar plot:
import seaborn as sns; sns.set(style='darkgrid')
import matplotlib.pyplot as plt
df = sns.load_dataset('titanic')
df['class'].value_counts().plot(kind="bar")
plt.show()
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14
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1The question was about using
seaborn
and there may be reasons why using a pandas plot is not acceptable.– PacoFeb 15, 2022 at 0:48