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One way to quantify the relationship between two variables is to use the Pearson correlation coefficient, which is a measure of the linear association between two variables*.Â *It always takes on a value between -1 and 1 where:

- -1 indicates a perfectly negative linear correlation between two variables
- 0 indicates no linear correlation between two variables
- 1 indicates a perfectly positive linear correlation between two variables

The further away the correlation coefficient is from zero, the stronger the relationship between the two variables.

This tutorial explains how to calculate the correlation between variables in Python.

**How to Calculate Correlation in Python**

To calculate the correlation between two variables in Python, we can use the Numpy **corrcoef()** function.

import numpy as np np.random.seed(100) #create array of 50 random integers between 0 and 10 var1 = np.random.randint(0, 10, 50) #create a positively correlated array with some random noise var2 = var1 + np.random.normal(0, 10, 50) #calculate the correlation between the two arrays np.corrcoef(var1, var2) [[ 1. 0.335] [ 0.335 1. ]]

We can see that the correlation coefficient between these two variables is **0.335**, which is a positive correlation.

By default, this function produces a matrix of correlation coefficients. If we only wanted to return the correlation coefficient between the two variables, we could use the following syntax:

np.corrcoef(var1, var2)[0,1] 0.335

To test if this correlation is statistically significant, we can calculate the p-value associated with the Pearson correlation coefficient by using the Scipy **pearsonr()** function, which returns the Pearson correlation coefficient along with the two-tailed p-value.

from scipy.stats.stats import pearsonr pearsonr(var1, var2) (0.335, 0.017398)

The correlation coefficient isÂ **0.335Â **and the two-tailedÂ p-value isÂ **.017**. Since this p-value is less than .05, we would conclude that there is a statistically significant correlation between the two variables.

If youâ€™re interested in calculating the correlation between several variables in a Pandas DataFrame, you can simpy use theÂ **.corr()Â **function.

import pandas as pd data = pd.DataFrame(np.random.randint(0, 10, size=(5, 3)), columns=['A', 'B', 'C']) data A B C 0 8 0 9 1 4 0 7 2 9 6 8 3 1 8 1 4 8 0 8 #calculate correlation coefficients for all pairwise combinations data.corr() A B C A 1.000000 -0.775567 -0.493769 B -0.775567 1.000000 0.000000 C -0.493769 0.000000 1.000000

And if youâ€™re only interested in calculating the correlation between two specific variables in the DataFrame, you can specify the variables:

data['A'].corr(data['B']) -0.775567

**Additional Resources**

The following tutorials explain how to perform other common tasks in Python:

How to Create a Correlation Matrix in Python

How to Calculate Spearman Rank Correlation in Python

How to Calculate Autocorrelation in Python