I have a data set with huge number of features, so analysing the correlation matrix has become very difficult. I want to plot a correlation matrix which we get using dataframe.corr() function from pandas library. Is there any built-in function provided by the pandas library to plot this matrix?


14 Answers 14


You can use pyplot.matshow() from matplotlib:

import matplotlib.pyplot as plt



In the comments was a request for how to change the axis tick labels. Here's a deluxe version that is drawn on a bigger figure size, has axis labels to match the dataframe, and a colorbar legend to interpret the color scale.

I'm including how to adjust the size and rotation of the labels, and I'm using a figure ratio that makes the colorbar and the main figure come out the same height.

EDIT 2: As the df.corr() method ignores non-numerical columns, .select_dtypes(['number']) should be used when defining the x and y labels to avoid an unwanted shift of the labels (included in the code below).

f = plt.figure(figsize=(19, 15))
plt.matshow(df.corr(), fignum=f.number)
plt.xticks(range(df.select_dtypes(['number']).shape[1]), df.select_dtypes(['number']).columns, fontsize=14, rotation=45)
plt.yticks(range(df.select_dtypes(['number']).shape[1]), df.select_dtypes(['number']).columns, fontsize=14)
cb = plt.colorbar()
plt.title('Correlation Matrix', fontsize=16);

correlation plot example

  • 1
    I must be missing something: AttributeError: 'module' object has no attribute 'matshow' May 16 '18 at 22:51
  • 1
    @TomRussell Did you do import matplotlib.pyplot as plt? Jun 5 '18 at 15:23
  • 11
    do you know how to display the actual column names on the plot?
    – WebQube
    Jan 4 '19 at 12:13
  • 2
    @Cecilia I had resolved this matter by changing the rotation parameter to 90 Nov 4 '19 at 16:12
  • 2
    With columns names longer than those, the x labels will look a bit off, in my case it was confusing as they looked shifted by one tick. Adding ha="left" to the plt.xticks call solved this problem, in case anyone has it as well :) described in stackoverflow.com/questions/28615887/…
    – V. Déhaye
    Apr 20 '20 at 15:44

If your main goal is to visualize the correlation matrix, rather than creating a plot per se, the convenient pandas styling options is a viable built-in solution:

import pandas as pd
import numpy as np

rs = np.random.RandomState(0)
df = pd.DataFrame(rs.rand(10, 10))
corr = df.corr()
# 'RdBu_r', 'BrBG_r', & PuOr_r are other good diverging colormaps

enter image description here

Note that this needs to be in a backend that supports rendering HTML, such as the JupyterLab Notebook.


You can easily limit the digit precision:


enter image description here

Or get rid of the digits altogether if you prefer the matrix without annotations:

corr.style.background_gradient(cmap='coolwarm').set_properties(**{'font-size': '0pt'})

enter image description here

The styling documentation also includes instructions of more advanced styles, such as how to change the display of the cell the mouse pointer is hovering over.

Time comparison

In my testing, style.background_gradient() was 4x faster than plt.matshow() and 120x faster than sns.heatmap() with a 10x10 matrix. Unfortunately it doesn't scale as well as plt.matshow(): the two take about the same time for a 100x100 matrix, and plt.matshow() is 10x faster for a 1000x1000 matrix.


There are a few possible ways to save the stylized dataframe:

  • Return the HTML by appending the render() method and then write the output to a file.
  • Save as an .xslx file with conditional formatting by appending the to_excel() method.
  • Combine with imgkit to save a bitmap
  • Take a screenshot (like I have done here).

Normalize colors across the entire matrix (pandas >= 0.24)

By setting axis=None, it is now possible to compute the colors based on the entire matrix rather than per column or per row:

corr.style.background_gradient(cmap='coolwarm', axis=None)

enter image description here

Single corner heatmap

Since many people are reading this answer I thought I would add a tip for how to only show one corner of the correlation matrix. I find this easier to read myself, since it removes the redundant information.

# Fill diagonal and upper half with NaNs
mask = np.zeros_like(corr, dtype=bool)
mask[np.triu_indices_from(mask)] = True
corr[mask] = np.nan
 .background_gradient(cmap='coolwarm', axis=None, vmin=-1, vmax=1)
 .highlight_null(null_color='#f1f1f1')  # Color NaNs grey

enter image description here

  • 2
    If there was a way to export is as an image, that would have been great! Jun 27 '18 at 4:43
  • 1
    Thanks! You definitely need a diverging palette import seaborn as sns corr = df.corr() cm = sns.light_palette("green", as_cmap=True) cm = sns.diverging_palette(220, 20, sep=20, as_cmap=True) corr.style.background_gradient(cmap=cm).set_precision(2) Jul 5 '18 at 9:00
  • 1
    @stallingOne Good point, I shouldn't have included negative values in the example, I might change that later. Just for reference for people reading this, you don't need to create a custom divergent cmap with seaborn (although the one in the comment above looks pretty slick), you can also use the built-in divergent cmaps from matplotlib, e.g. corr.style.background_gradient(cmap='coolwarm'). There is currently no way to center the cmap on a specific value, which can be a good idea with divergent cmaps. Jul 5 '18 at 13:54
  • 1
    @rovyko Are you on pandas >=0.24.0? Mar 6 '19 at 19:17
  • 2
    These plots are visually great, but @Kristada673 question is quite relevant, how would you export them?
    – Erfan
    May 15 '19 at 16:31

Seaborn's heatmap version:

import seaborn as sns
corr = dataframe.corr()
  • 13
    Seaborn heatmap is fancy but it performs poor on large matrices. matshow method of matplotlib is much faster.
    – anilbey
    Aug 22 '17 at 22:28
  • 4
    Seaborn can automatically infer the ticklabels from the column names. Oct 2 '18 at 21:32
  • It seems that not all ticklabels are shown always if seaborn is left to automatically infer stackoverflow.com/questions/50754471/…
    – janto
    Sep 14 at 15:21

Try this function, which also displays variable names for the correlation matrix:

def plot_corr(df,size=10):
    """Function plots a graphical correlation matrix for each pair of columns in the dataframe.

        df: pandas DataFrame
        size: vertical and horizontal size of the plot

    corr = df.corr()
    fig, ax = plt.subplots(figsize=(size, size))
    plt.xticks(range(len(corr.columns)), corr.columns)
    plt.yticks(range(len(corr.columns)), corr.columns)
  • 7
    plt.xticks(range(len(corr.columns)), corr.columns, rotation='vertical') if you want vertical orientation of column names on x-axis
    – nishant
    Feb 18 '19 at 8:38
  • Another graphical thing, but adding a plt.tight_layout() might also be useful for long column names. May 28 '19 at 6:18

You can observe the relation between features either by drawing a heat map from seaborn or scatter matrix from pandas.

Scatter Matrix:

pd.scatter_matrix(dataframe, alpha = 0.3, figsize = (14,8), diagonal = 'kde');

If you want to visualize each feature's skewness as well - use seaborn pairplots.


Sns Heatmap:

import seaborn as sns

f, ax = pl.subplots(figsize=(10, 8))
corr = dataframe.corr()
sns.heatmap(corr, mask=np.zeros_like(corr, dtype=np.bool), cmap=sns.diverging_palette(220, 10, as_cmap=True),
            square=True, ax=ax)

The output will be a correlation map of the features. i.e. see the below example.

enter image description here

The correlation between grocery and detergents is high. Similarly:

Pdoducts With High Correlation:
  1. Grocery and Detergents.
Products With Medium Correlation:
  1. Milk and Grocery
  2. Milk and Detergents_Paper
Products With Low Correlation:
  1. Milk and Deli
  2. Frozen and Fresh.
  3. Frozen and Deli.

From Pairplots: You can observe same set of relations from pairplots or scatter matrix. But from these we can say that whether the data is normally distributed or not.

enter image description here

Note: The above is same graph taken from the data, which is used to draw heatmap.

  • 3
    I think it should be .plt not .pl (if this is referring to matplotlib)
    – ghukill
    Jul 9 '17 at 2:17
  • 2
    @ghukill Not neccessarily. He could have referred it as from matplotlib import pyplot as pl
    – Jeru Luke
    Oct 14 '17 at 12:41
  • how to set the boundary of the correlation between -1 to +1 always, in the correlation plot Apr 29 '19 at 5:09

For completeness, the simplest solution i know with seaborn as of late 2019, if one is using Jupyter:

import seaborn as sns

If you dataframe is df you can simply use:

import matplotlib.pyplot as plt
import seaborn as sns

plt.figure(figsize=(15, 10))
sns.heatmap(df.corr(), annot=True)

You can use imshow() method from matplotlib

import pandas as pd
import matplotlib.pyplot as plt

plt.imshow(X.corr(), cmap=plt.cm.Reds, interpolation='nearest')
tick_marks = [i for i in range(len(X.columns))]
plt.xticks(tick_marks, X.columns, rotation='vertical')
plt.yticks(tick_marks, X.columns)

Surprised to see no one mentioned more capable, interactive and easier to use alternatives.

A) You can use plotly:

  1. Just two lines and you get:

  2. interactivity,

  3. smooth scale,

  4. colors based on whole dataframe instead of individual columns,

  5. column names & row indices on axes,

  6. zooming in,

  7. panning,

  8. built-in one-click ability to save it as a PNG format,

  9. auto-scaling,

  10. comparison on hovering,

  11. bubbles showing values so heatmap still looks good and you can see values wherever you want:

import plotly.express as px
fig = px.imshow(df.corr())

enter image description here

B) You can also use Bokeh:

All the same functionality with a tad much hassle. But still worth it if you do not want to opt-in for plotly and still want all these things:

from bokeh.plotting import figure, show, output_notebook
from bokeh.models import ColumnDataSource, LinearColorMapper
from bokeh.transform import transform
colors = ['#d7191c', '#fdae61', '#ffffbf', '#a6d96a', '#1a9641']
TOOLS = "hover,save,pan,box_zoom,reset,wheel_zoom"
data = df.corr().stack().rename("value").reset_index()
p = figure(x_range=list(df.columns), y_range=list(df.index), tools=TOOLS, toolbar_location='below',
           tooltips=[('Row, Column', '@level_0 x @level_1'), ('value', '@value')], height = 500, width = 500)

p.rect(x="level_1", y="level_0", width=1, height=1,
       fill_color={'field': 'value', 'transform': LinearColorMapper(palette=colors, low=data.value.min(), high=data.value.max())},
color_bar = ColorBar(color_mapper=LinearColorMapper(palette=colors, low=data.value.min(), high=data.value.max()), major_label_text_font_size="7px",
                     label_standoff=6, border_line_color=None, location=(0, 0))
p.add_layout(color_bar, 'right')


enter image description here


statmodels graphics also gives a nice view of correlation matrix

import statsmodels.api as sm
import matplotlib.pyplot as plt

corr = dataframe.corr()
sm.graphics.plot_corr(corr, xnames=list(corr.columns))

Along with other methods it is also good to have pairplot which will give scatter plot for all the cases-

import pandas as pd
import numpy as np
import seaborn as sns
rs = np.random.RandomState(0)
df = pd.DataFrame(rs.rand(10, 10))

Form correlation matrix, in my case zdf is the dataframe which i need perform correlation matrix.

corrMatrix =zdf.corr()
html = corrMatrix.style.background_gradient(cmap='RdBu').set_precision(2).render()

# Writing the output to a html file.
with open('test.html', 'w') as f:
   print('<!DOCTYPE html><html lang="en"><head><meta charset="UTF-8"><meta name="viewport" content="width=device-widthinitial-scale=1.0"><title>Document</title></head><style>table{word-break: break-all;}</style><body>' + html+'</body></html>', file=f)

Then we can take screenshot. or convert html to an image file.


You can use heatmap() from seaborn to see the correlation b/w different features:

import matplot.pyplot as plt
import seaborn as sns

sns.heatmap(co_matrix, square=True, cbar_kws={"shrink": .5})

Please check below readable code

import numpy as np
import seaborn as sns
import matplotlib.pyplot as plt
plt.figure(figsize=(36, 26))
heatmap = sns.heatmap(df.corr(), vmin=-1, vmax=1, annot=True)
heatmap.set_title('Correlation Heatmap', fontdict={'fontsize':12}, pad=12)```

  [1]: https://i.stack.imgur.com/I5SeR.png

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.