We can use the .corr() method to get the correlation between two columns in Pandas. Let's take an example and see how to apply this method.
Steps
- Create a two-dimensional, size-mutable, potentially heterogeneous tabular data, df.
- Print the input DataFrame, df.
- Initialize two variables, col1 and col2, and assign them the columns that you want to find the correlation of.
- Find the correlation between col1 and col2 by using df[col1].corr(df[col2]) and save the correlation value in a variable, corr.
- Print the correlation value, corr.
Example
import pandas as pd df = pd.DataFrame( { "x": [5, 2, 7, 0], "y": [4, 7, 5, 1], "z": [9, 3, 5, 1] } ) print "Input DataFrame is:\n", df col1, col2 = "x", "y" corr = df[col1].corr(df[col2]) print "Correlation between ", col1, " and ", col2, "is: ", round(corr, 2) col1, col2 = "x", "x" corr = df[col1].corr(df[col2]) print "Correlation between ", col1, " and ", col2, "is: ", round(corr, 2) col1, col2 = "x", "z" corr = df[col1].corr(df[col2]) print "Correlation between ", col1, " and ", col2, "is: ", round(corr, 2) col1, col2 = "y", "x" corr = df[col1].corr(df[col2]) print "Correlation between ", col1, " and ", col2, "is: ", round(corr, 2)
Output
Input DataFrame is: x y z 0 5 4 9 1 2 7 3 2 7 5 5 3 0 1 1 Correlation between x and y is: 0.41 Correlation between x and x is: 1.0 Correlation between x and z is: 0.72 Correlation between y and x is: 0.41