# pandas columns correlation with statistical significance

What is the best way, given a pandas dataframe, df, to get the correlation between its columns `df.1` and `df.2`?

I do not want the output to count rows with `NaN`, which `pandas` built-in correlation does. But I also want it to output a `pvalue` or a standard error, which the built-in does not.

`SciPy` seems to get caught up by the NaNs, though I believe it does report significance.

Data example:

``````     1           2
0    2          NaN
1    NaN         1
2    1           2
3    -4          3
4    1.3         1
5    NaN         NaN
``````
• could you provide an example of your data? Aug 29 '14 at 16:12

To calculate all the p-values at once, you can use `calculate_pvalues` function (code below):

``````df = pd.DataFrame({'A':[1,2,3], 'B':[2,5,3], 'C':[5,2,1], 'D':['text',2,3] })
calculate_pvalues(df)
``````

The output is similar to the `corr()` (but with p-values):

``````            A       B       C
A       0  0.7877  0.1789
B  0.7877       0  0.6088
C  0.1789  0.6088       0
``````

Details:

• Column D is automatically ignored as it contains text.
• p-values are rounded to 4 decimals
• You can subset to indicate exact columns: `calculate_pvalues(df[['A','B','C']]`

### Following is the code of the function:

``````from scipy.stats import pearsonr
import pandas as pd

def calculate_pvalues(df):
df = df.dropna()._get_numeric_data()
dfcols = pd.DataFrame(columns=df.columns)
pvalues = dfcols.transpose().join(dfcols, how='outer')
for r in df.columns:
for c in df.columns:
pvalues[r][c] = round(pearsonr(df[r], df[c]), 4)
return pvalues
``````

You can use the scipy.stats correlation functions to get the p-value.

For example, if you are looking for a correlation such as pearson correlation, you can use the pearsonr function.

``````from scipy.stats import pearsonr
pearsonr([1, 2, 3], [4, 3, 7])
``````

Gives output

``````(0.7205766921228921, 0.48775429164459994)
``````

Where the first value in the tuple is the correlation value, and second is the p-value.

In your case, you can use pandas' `dropna` function to remove `NaN` values first.

``````df_clean = df[['column1', 'column2']].dropna()
pearsonr(df_clean['column1'], df_clean['column2'])
``````

Statistical significance denoted in asterisks:

``````from scipy.stats import pearsonr
import numpy as np
rho = df.corr()
pval = df.corr(method=lambda x, y: pearsonr(x, y)) - np.eye(*rho.shape)
p = pval.applymap(lambda x: ''.join(['*' for t in [0.01,0.05,0.1] if x<=t]))
rho.round(2).astype(str) + p
`````` • This is great for implementing. Any chance that it can be worked into a sns.heatmap with np.triu as mask? Nov 5 '20 at 6:25

Answer provided by @Shashank is nice. However, if you want a solution in pure `pandas`, you may like this:

``````import pandas as pd
from datetime import datetime
import scipy.stats  as stats

gdp = pd.DataFrame(DataReader("GDP", "fred", start=datetime(1990, 1, 1)))
vix = pd.DataFrame(DataReader("VIXCLS", "fred", start=datetime(1990, 1, 1)))

#Do it with a pandas regression to get the p value from the F-test
df = gdp.merge(vix,left_index=True, right_index=True, how='left')
vix_on_gdp = pd.ols(y=df['VIXCLS'], x=df['GDP'], intercept=True)
print(df['VIXCLS'].corr(df['GDP']), vix_on_gdp.f_stat['p-value'])
``````

Results:

``````-0.0422917932738 0.851762475093
``````

Same results as stats function:

``````#Do it with stats functions.
df_clean = df.dropna()
stats.pearsonr(df_clean['VIXCLS'], df_clean['GDP'])
``````

Results:

``````  (-0.042291793273791969, 0.85176247509284908)
``````

To extend to more vairables I give you an ugly loop based approach:

``````#Add a third field
oil = pd.DataFrame(DataReader("DCOILWTICO", "fred", start=datetime(1990, 1, 1)))
df = df.merge(oil,left_index=True, right_index=True, how='left')

#construct two arrays, one of the correlation and the other of the p-vals
rho = df.corr()
pval = np.zeros([df.shape,df.shape])
for i in range(df.shape): # rows are the number of rows in the matrix.
for j in range(df.shape):
JonI        = pd.ols(y=df.icol(i), x=df.icol(j), intercept=True)
pval[i,j]  = JonI.f_stat['p-value']
``````

Results of rho:

``````             GDP    VIXCLS  DCOILWTICO
GDP         1.000000 -0.042292    0.870251
VIXCLS     -0.042292  1.000000   -0.004612
DCOILWTICO  0.870251 -0.004612    1.000000
``````

Results of pval:

`````` [[  0.00000000e+00   8.51762475e-01   1.11022302e-16]
[  8.51762475e-01   0.00000000e+00   9.83747425e-01]
[  1.11022302e-16   9.83747425e-01   0.00000000e+00]]
``````
• What if there are more than 2 columns, is there a way to get a nice output table for correlations? Aug 29 '14 at 16:46
• df.corr() will give you the correlation structure for the whole data frame but to use the regression calculation approach of the p-value would be messy.
– BKay
Aug 29 '14 at 17:20
• `pd.ols` was deprecated in v 0.20.0, and `DataReader` was moved to `pandas-datareader`: github.com/pydata/pandas-datareader Mar 3 '19 at 0:52

In pandas v0.24.0 a `method` argument was added to `corr`. Now, you can do:

``````import pandas as pd
import numpy as np
from scipy.stats import pearsonr

df = pd.DataFrame({'A':[1,2,3], 'B':[2,5,3], 'C':[5,2,1]})

df.corr(method=lambda x, y: pearsonr(x, y)) - np.eye(len(df.columns))
``````
``````          A         B         C
A  0.000000  0.787704  0.178912
B  0.787704  0.000000  0.608792
C  0.178912  0.608792  0.000000
``````

Please note the workaround with `np.eye(len(df.columns))` which is needed, because self-correlations are always set to `1.0` (see https://github.com/pandas-dev/pandas/issues/25726).

I have tried to sum the logic in a function, it might not be the most efficient approach but will provide you with a similar output as pandas df.corr(). To use this just put the following function in your code and call it providing your dataframe object ie. corr_pvalue(your_dataframe).

I have rounded the values to 4 decimal place, in case you want different output please change the value in round function.

``````from scipy.stats import pearsonr
import numpy as np
import pandas as pd

def corr_pvalue(df):

numeric_df = df.dropna()._get_numeric_data()
cols = numeric_df.columns
mat = numeric_df.values

arr = np.zeros((len(cols),len(cols)), dtype=object)

for xi, x in enumerate(mat.T):
for yi, y in enumerate(mat.T[xi:]):
arr[xi, yi+xi] = map(lambda _: round(_,4), pearsonr(x,y))
arr[yi+xi, xi] = arr[xi, yi+xi]

return pd.DataFrame(arr, index=cols, columns=cols)
``````

I have tested it with pandas v0.18.1

That was very useful code by oztalha. I just changed formatting (rounded to 2 digits) wherever r was not significant.

``````    rho = data.corr()
pval = calculate_pvalues(data) # toto_tico's answer
r1 = rho.applymap(lambda x: '{:.2f}*'.format(x))
r2 = rho.applymap(lambda x: '{:.2f}**'.format(x))
r3 = rho.applymap(lambda x: '{:.2f}***'.format(x))
r4 = rho.applymap(lambda x: '{:.2f}'.format(x))
# apply them where appropriate --this could be a single liner
rho
``````
• Generally, answers are much more helpful if they include an explanation of what the code is intended to do, and why that solves the problem without introducing others. May 23 '18 at 9:47

Great answers from @toto_tico and @Somendra-joshi. However, it drops unnecessary NAs values. In this snippet, I'm just dropping the NAs that belong to the correlation being computing at the moment. In the actual corr implementation, they do the same.

``````def calculate_pvalues(df):
df = df._get_numeric_data()
dfcols = pd.DataFrame(columns=df.columns)
pvalues = dfcols.transpose().join(dfcols, how='outer')
for r in df.columns:
for c in df.columns:
if c == r:
df_corr = df[[r]].dropna()
else:
df_corr = df[[r,c]].dropna()
pvalues[r][c] = pearsonr(df_corr[r], df_corr[c])
return pvalues
``````

In a single line of code using list comprehension:

``````>>> import pandas as pd
>>> from scipy.stats import pearsonr
>>> data = {'y':[0, 3, 2, 4, 3, 5, 4, 6, 5, 7, 6],
...         'x1':[0, 4, 2, 6, 2, 8, 6, 10, 4, 13, 5],
...         'x2':[0.0, 1.3, 0.2, 4.5, 1.3, 1.6, 3.5, 1.7, 1.6, 3.7, 1.7]}
>>> df = pd.DataFrame(data)
>>> pvals = pd.DataFrame([[pearsonr(df[c], df[y]) for y in df.columns] for c in df.columns],
...                      columns=df.columns, index=df.columns)
>>> pvals
y        x1        x2
y   0.000000  0.000732  0.069996
x1  0.000732  0.000000  0.036153
x2  0.069996  0.036153  0.000000
>>>
``````

I'd be interested in a slick technique that might combine the above data frame with this one:

``````>>> df.corr()
y        x1        x2
y   1.000000  0.857786  0.565208
x1  0.857786  1.000000  0.634093
x2  0.565208  0.634093  1.000000
``````

Desired output:

``````              y        x1        x2
y  c    1.000000  0.857786  0.565208
p    (0.0000)  (0.0007)  (0.0699)
x1 c    0.857786  1.000000  0.634093
p    (0.0007)  (0.0000)  (0.0361)
x2 c    0.565208  0.634093  1.000000
p    (0.0699)  (0.0361)  (0.0000)
``````

Where there is a multi-index and the `c` rows are the correlation coefficient while the `p` rows provide the pvalue.

Thoughts anyone?

• Not exactly slick, but this works and gets the desired output, p = pd.DataFrame([[pearsonr(df[c], df[y]) for y in df.columns] for c in df.columns], columns=df.columns, index=df.columns).copy() p["type"] = "p" p.index.name="col" p = p.set_index([p.index,"type"]) c = df.corr() c["type"] = "c" c.index.name = "col" c = c.set_index([c.index,"type"]) c.combine_first(p) Feb 2 at 10:33