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# How to compute rolling rank correlation using Pandas

I would like to compute rolling rank correlation between two columns in a data frame. However, the current `rolling_corr` in pandas does not support rank correlation. I tried to implement rolling rank correlation with `rolling_apply`, but did not have any success. It seems like `rolling_apply` only takes one array as input argument, but correlation needs two arrays. Is there a clever way to implement rolling rank correlation with `rolling_apply` or some other methods? Rank correlation would be a nice addition to `rolling_corr` if possible.

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## 1 Answer

I don't think `rolling_apply` can be used to do a rolling correlation, as it seems to break DataFrames into 1-d arrays. There may be better ways to do this, but one solution is to make generator to yield a slice for each window yourself:

``````def window(length, size=2, start=0):
while start + size <= length:
yield slice(start, start + size)
start += 1
``````

and then loop through it..

``````In [144]: from pandas import DataFrame
...: import numpy as np
...:
...: df = DataFrame(np.arange(10).reshape(2,5).T, columns=['a','b'])
...:
...: df.iloc[0,1] = -1       #still perfect with ranked correlation, but not with pearson's r
...:
...: for w in window(len(df), size=3):
...:     df_win = df.iloc[w,:]
...:     spearman = df_win['a'].rank().corr(df_win['b'].rank())
...:     pearson  = df_win['a'].corr(df_win['b'])
...:     print w.start, spearman, pearson
...:
0 1.0 0.917662935482
1 1.0 1.0
2 1.0 1.0
``````
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