I want to represent correlation matrix using a heatmap. There is something called correlogram in R, but I don't think there's such a thing in Python.

How can I do this? The values go from -1 to 1, for example:

[[ 1.          0.00279981  0.95173379  0.02486161 -0.00324926 -0.00432099]
 [ 0.00279981  1.          0.17728303  0.64425774  0.30735071  0.37379443]
 [ 0.95173379  0.17728303  1.          0.27072266  0.02549031  0.03324756]
 [ 0.02486161  0.64425774  0.27072266  1.          0.18336236  0.18913512]
 [-0.00324926  0.30735071  0.02549031  0.18336236  1.          0.77678274]
 [-0.00432099  0.37379443  0.03324756  0.18913512  0.77678274  1.        ]]

I was able to produce the following heatmap based on another question, but the problem is that my values get 'cut' at 0, so I would like to have a map which goes from blue(-1) to red(1), or something like that, but here values below 0 are not presented in an adequate way.

enter image description here

Here's the code for that:

plt.imshow(correlation_matrix,cmap='hot',interpolation='nearest')
  • I've edited the question so you can check. – Marko Sep 9 '16 at 11:02
up vote 21 down vote accepted

Another alternative is to use the heatmap function in seaborn to plot the covariance. This example uses the Auto data set from the ISLR package in R (the same as in the example you showed).

import pandas.rpy.common as com
import seaborn as sns
%matplotlib inline

# load the R package ISLR
infert = com.importr("ISLR")

# load the Auto dataset
auto_df = com.load_data('Auto')

# calculate the correlation matrix
corr = auto_df.corr()

# plot the heatmap
sns.heatmap(corr, 
        xticklabels=corr.columns,
        yticklabels=corr.columns)

enter image description here

If you wanted to be even more fancy, you can use Pandas Style, for example:

cmap = cmap=sns.diverging_palette(5, 250, as_cmap=True)

def magnify():
    return [dict(selector="th",
                 props=[("font-size", "7pt")]),
            dict(selector="td",
                 props=[('padding', "0em 0em")]),
            dict(selector="th:hover",
                 props=[("font-size", "12pt")]),
            dict(selector="tr:hover td:hover",
                 props=[('max-width', '200px'),
                        ('font-size', '12pt')])
]

corr.style.background_gradient(cmap, axis=1)\
    .set_properties(**{'max-width': '80px', 'font-size': '10pt'})\
    .set_caption("Hover to magify")\
    .set_precision(2)\
    .set_table_styles(magnify())

enter image description here

  • I tried to use this and ended up encountering an issue see this new SO question – Alison K Aug 28 at 18:48
  • Looking carefully you can see that the issue covered in this question affects this solution. Look carefully at the coefficients for acceleration, year and origin, the 0.29, 0.21 and 0.18 are colored differently in the two places they occur. – Alison K Aug 30 at 16:52

Late to the party, but I felt like contributing something I put together after it was announced that the outstanding seaborn corrplot was to be deprecated. The following snippet makes a resembling correlation plot based on seaborn heatmap. You can also specify the color range and select whether or not to drop duplicate correlations. Notice that I've used the same numbers as you, but that I've put them in a pandas dataframe. Regarding the choice of colors you can have a look at the documents for sns.diverging_palette.

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

# A list with your data slightly edited
l = [1.0,0.00279981,0.95173379,0.02486161,-0.00324926,-0.00432099,
0.00279981,1.0,0.17728303,0.64425774,0.30735071,0.37379443,
0.95173379,0.17728303,1.0,0.27072266,0.02549031,0.03324756,
0.02486161,0.64425774,0.27072266,1.0,0.18336236,0.18913512,
-0.00324926,0.30735071,0.02549031,0.18336236,1.0,0.77678274,
-0.00432099,0.37379443,0.03324756,0.18913512,0.77678274,1.00]

# Split list
n = 6
data = [l[i:i + n] for i in range(0, len(l), n)]

# A dataframe
df = pd.DataFrame(data)

def CorrMtx(df, dropDuplicates = True):

    # Your dataset is already a correlation matrix.
    # If you have a dateset where you need to include the calculation
    # of a correlation matrix, just uncomment the line below:
    # df = df.corr()

    # Exclude duplicate correlations by masking uper right values
    if dropDuplicates:    
        mask = np.zeros_like(df, dtype=np.bool)
        mask[np.triu_indices_from(mask)] = True

    # Set background color / chart style
    sns.set_style(style = 'white')

    # Set up  matplotlib figure
    f, ax = plt.subplots(figsize=(11, 9))

    # Add diverging colormap from red to blue
    cmap = sns.diverging_palette(250, 10, as_cmap=True)

    # Draw correlation plot with or without duplicates
    if dropDuplicates:
        sns.heatmap(df, mask=mask, cmap=cmap, 
                square=True,
                linewidth=.5, cbar_kws={"shrink": .5}, ax=ax)
    else:
        sns.heatmap(df, cmap=cmap, 
                square=True,
                linewidth=.5, cbar_kws={"shrink": .5}, ax=ax)


CorrMtx(df, dropDuplicates = False)

Here's the resulting plot:

enter image description here

You asked for blue, but that falls out of the range in your sample data. Change 0.95173379 to -0.95173379 for both observations and you'll get this:

enter image description here

If your data is in a Pandas DataFrame, you can use Seaborn's heatmap function to create your desired plot.

import seaborn as sns

Var_Corr = df.corr()
# plot the heatmap and annotation on it
sns.heatmap(Var_Corr, xticklabels=Var_Corr.columns, yticklabels=Var_Corr.columns, annot=True)

Correlation plot

From the question, it looks like the data is in a NumPy array. If that array has the name numpy_data, before you can use the step above, you would want to put it into a Pandas DataFrame using the following:

import pandas as pd
df = pd.DataFrame(numpy_data)
  • Welcome to Stack Overflow and thank you for contributing! Have a look at how I edited your answer to see how to use the code syntax (4 spaces before each line). Also, it's best practice to add spaces after the commas in a function call so it is easier to parse visually. – Steven C. Howell Apr 5 at 19:15

You can use matplotlib for this. There's a similar question which shows how you can achieve what you want: Plotting a 2D heatmap with Matplotlib

  • Thank you for your answer, please see the edited question. – Marko Sep 9 '16 at 11:02
  1. Use the 'jet' colormap for a transition between blue and red.
  2. Use pcolor() with the vmin, vmax parameters.

It is detailed in this answer: https://stackoverflow.com/a/3376734/21974

  • Can you please give an example in my case, I'm not very experienced with Python so I have issues with this. In the example you gave they use X, Y = np.meshgrid(x,y), I don't have that? – Marko Sep 9 '16 at 13:29
  • The meshgrid is just there to assign a coordinate pair to each point so that it is plotted as a heatmap. – ypnos Sep 9 '16 at 16:23

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