11

I am trying to display a pair plot by creating from scatter_matrix in pandas dataframe. This is how the pair plot is created:

# Create dataframe from data in X_train
# Label the columns using the strings in iris_dataset.feature_names
iris_dataframe = pd.DataFrame(X_train, columns=iris_dataset.feature_names)
# Create a scatter matrix from the dataframe, color by y_train
grr = pd.scatter_matrix(iris_dataframe, c=y_train, figsize=(15, 15), marker='o',
hist_kwds={'bins': 20}, s=60, alpha=.8, cmap=mglearn.cm3)

I want to display the pair plot to look something like this;

Enter image description here

I am using Python v3.6 and PyCharm and am not using Jupyter Notebook.

19

This code worked for me using Python 3.5.2:

import pandas as pd
import matplotlib.pyplot as plt
%matplotlib inline

from sklearn import datasets

iris_dataset = datasets.load_iris()
X = iris_dataset.data
Y = iris_dataset.target

iris_dataframe = pd.DataFrame(X, columns=iris_dataset.feature_names)

# Create a scatter matrix from the dataframe, color by y_train
grr = pd.plotting.scatter_matrix(iris_dataframe, c=Y, figsize=(15, 15), marker='o',
                                 hist_kwds={'bins': 20}, s=60, alpha=.8)

For pandas version < v0.20.0.

Thanks to michael-szczepaniak for pointing out that this API had been deprecated.

grr = pd.scatter_matrix(iris_dataframe, c=Y, figsize=(15, 15), marker='o',
                        hist_kwds={'bins': 20}, s=60, alpha=.8)

I just had to remove the cmap=mglearn.cm3 piece, because I was not able to make mglearn work. There is a version mismatch issue with sklearn.

To not display the image and save it directly to file you can use this method:

plt.savefig('foo.png')

Also remove

# %matplotlib inline

Enter image description here

  • your answer is correct if I am using Jupyter. However, I am using pycharm. %matplotlib inline doesn't run in my environment. Is it possible if I can plot the charts without using Jupyter? Thanks. – user3848207 Mar 4 '17 at 8:19
  • @user3848207 use plt.savefig('foo.png') to save the figure to file and not display inline. – Vikash Singh Mar 4 '17 at 8:26
  • Thanks. plt.savefig('foo.png') works. plt.show() works well for me too. – user3848207 Mar 4 '17 at 8:30
  • 1
    YvetteColomb: Thanks for pointing that out. Versions of softwares keep changing, so we need a good way for Stackoverflow to handle these issues. Having a standard way to deal with this will help everyone. Thanks to @Michael Szczepaniak for pointing the version mismatch issue :) and thanks to you for raising the discussion :) – Vikash Singh Nov 17 '17 at 18:30
13

Just an update to Vikash's excellent answer. The last two lines should now be:

grr = pd.plotting.scatter_matrix(iris_dataframe, c=Y, figsize=(15, 15), marker='o',
                                 hist_kwds={'bins': 20}, s=60, alpha=.8)

The scatter_matrix function has been moved to the plotting package, so the original answer, while correct is now deprecated.

So the complete code would now be:

import pandas as pd
import matplotlib.pyplot as plt
%matplotlib inline

from sklearn import datasets

iris_dataset = datasets.load_iris()
X = iris_dataset.data
Y = iris_dataset.target

iris_dataframe = pd.DataFrame(X, columns=iris_dataset.feature_names)
# create a scatter matrix from the dataframe, color by y_train
grr = pd.plotting.scatter_matrix(iris_dataframe, c=Y, figsize=(15, 15), marker='o',
                                 hist_kwds={'bins': 20}, s=60, alpha=.8)
  • The original answer no longer includes this, as per this meta post meta.stackoverflow.com/a/359441/1873567 – CalvT Nov 16 '17 at 13:30
  • 1
    Well, the original answer now re-includes this, as Vikash Singh did the right thing and updated his answer. So now this answer is completely redundant, again. – Jean-François Corbett Nov 19 '17 at 15:07
2

This is also possible using seaborn:

import seaborn as sns

df = sns.load_dataset("iris")
sns.pairplot(df, hue="species")

Seaborn pairplot of iris data

1

I finally know how to do it with PyCharm.

Just import matploblib.plotting as plt instead:

import numpy as np
import matplotlib.pyplot as plt
import pandas as pd
import mglearn
from pandas.plotting import scatter_matrix

from sklearn.datasets import load_iris
from sklearn.model_selection import train_test_split

iris_dataset = load_iris()

X_train,X_test,Y_train,Y_test = train_test_split(iris_dataset['data'],iris_dataset['target'],random_state=0)
iris_dataframe = pd.DataFrame(X_train,columns=iris_dataset.feature_names)

grr = scatter_matrix(iris_dataframe,c = Y_train,figsize = (15,15),marker = 'o',
                        hist_kwds={'bins':20},s=60,alpha=.8,cmap = mglearn.cm3)
plt.show()

Then it works perfect as below:

Plot image

  • How does this add value to existing answers? – Jean-François Corbett Nov 15 '17 at 8:50
  • @Jean-François Corbett some code is not useful at this moment,so I just post a version of correct code – R.Zhan Nov 15 '17 at 11:28
  • What does this mean: "just import matploblib.plotting as plt instead." – Jean-François Corbett Nov 16 '17 at 9:45
1

enter image description herefirst of all use pip install mglearn then import the mglearn

the code will be like this...

from sklearn.datasets import load_iris
from sklearn.model_selection import train_test_split
import pandas as pd
import mglearn
import matplotlib.pyplot as plt

iris_dataframe=pd.DataFrame(X_train,columns=iris_dataset.feature_names)
grr=pd.scatter_matrix(iris_dataframe,
                  c=y_train,figsize=(15,15),marker='o',hist_kwds={'bins':20},
                  s=60,alpha=.8,cmap=mglearn.cm3)
plt.show()

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.