Use Seaborn's jointplot to quickly visualize the relationship and distribution between two variables; 2. The basic scatter plot is implemented by sns.jointplot(data=tips, x="total_bill", y="tip", kind="scatter"), the center is a scatter plot, and the histogram is displayed on the top and bottom and right sides; 3. Add regression lines and density information to use kind="reg" and combine marginal_kws to set the edge map style; 4. When the data volume is large, kind="hex" is recommended, and use hexagonal box plot to display data dense areas; 5. Use kind="kde" to combine fill=True and thresh=0.05 to draw the filled kernel density contour plot to clearly present the distribution trend; 6. Common parameters include data, x, y, kind, margin_kws, height and ratio. Jointplot is suitable for exploring the relationship and distribution of bicontinuous variables, with concise code and rich information.
Using Seaborn's jointplot
in Python can easily visualize the relationship between two variables while showing their respective distributions. Here is a practical jointplot
example to help you get started quickly.

1. Basic scatter plot jointplot (scatter)
import seaborn as sns import matplotlib.pyplot as plt # Load sample data tips = sns.load_dataset("tips") # Create jointplot sns.jointplot(data=tips, x="total_bill", y="tip", kind="scatter") plt.show()
This generates a scatter plot, with the center of the scatter relationship between total_bill
and tip
, and the top and right are the histograms of the two variables respectively.
2. Jointplot with regression lines and density maps
If you want to see trends and distribution density more clearly:

sns.jointplot(data=tips, x="total_bill", y="tip", kind="reg", marginal_kws=dict(bins=15, fill=True)) plt.show()
-
kind="reg"
: Add regression line and correlation information. -
marginal_kws
: Controls the style of the edge diagram (upper and right), such as the number of columns and whether to fill in color.
3. Use hexagonal box plots (hex) to display large amounts of data
When there are many data points and the scatter plots overlap severely, hexagonal box plots can be used:
# Generate some simulated data import numpy as np np.random.seed(42) x = np.random.randn(1000) y = x np.random.randn(1000) # Use hex mode sns.jointplot(x=x, y=y, kind="hex", color="blue") plt.show()
The darker the hexagon color, the denser the data points in the area.

4. Use kernel density estimation (kde) to display the distribution
sns.jointplot(data=tips, x="total_bill", y="tip", kind="kde", fill=True, thresh=0.05) plt.show()
-
kind="kde"
: Use contour graph to represent density. -
fill=True
: Fill color. -
thresh=0.05
: Set density threshold to avoid edge noise.
Common parameter description
-
data
: DataFrame data. -
x
,y
: variable name (string) or array. -
kind
: Drawing type, optionally"scatter"
,"reg"
,"resid"
,"kde"
,"hex"
. -
marginal_kws
: controls the parameters of the edge graph. -
height
: image size (such asheight=6
). -
ratio
: The ratio of the center graph to the edge graph (default 5:1).
Basically these common uses. jointplot
is suitable for exploring the relationship and distribution of two continuous variables. A few simple lines of code can obtain rich information.
The above is the detailed content of python seaborn jointplot example. For more information, please follow other related articles on the PHP Chinese website!

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