# In Python, how can I calculate correlation and statistical significance between two arrays of data?

I have sets of data with two equally long arrays of data, or I can make an array of two-item entries, and I would like to calculate the correlation and statistical significance represented by the data (which may be tightly correlated, or may have no statistically significant correlation).

I am programming in Python and have scipy and numpy installed. I looked and found Calculating Pearson correlation and significance in Python, but that seems to want the data to be manipulated so it falls into a specified range.

What is the proper way to, I assume, ask scipy or numpy to give me the correlation and statistical significance of two arrays?

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Why do you think that `scipy.stats.pearsonr` wants the data to be manipulated so it falls into a specified range? –  ecatmur Jun 20 '12 at 14:29
The correlation coefficient falls between -1 and +1. That's the output, not the input. –  Janne Karila Jun 20 '12 at 14:50

If you want to calculate the Pearson Correlation Coefficient, then `scipy.stats.pearsonr` is the way to go; although, the significance is only meaningful for larger data sets. This function does not require the data to be manipulated to fall into a specified range. The value for the correlation falls in the interval `[-1,1]`, perhaps that was the confusion?

If the significance is not terribly important, you can use `numpy.corrcoef()`.

The Mahalanobis distance does take into account the correlation between two arrays, but it provides a distance measure, not a correlation. (Mathematically, the Mahalanobis distance is not a true distance function; nevertheless, it can be used as such in certain contexts to great advantage.)

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You can use the Mahalanobis distance between these two arrays, which takes into account the correlation between them.

The function is in the scipy package: `scipy.spatial.distance.mahalanobis`

There's a nice example here

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``````import scipy.spatial.distance as spsd