I have two sets of N-dimensional arrays which I need to somehow compare and obtain a value that represents how "similar" they are. In statistical terms this is a two-sample goodness of fit problem where the hypothesis is that the two arrays are derived from the same parent distribution.

To simplify, imagine 2-dimensional arrays like the ones shown below:

for which I need to present a number that quantifies how "similar" they are.

Is there a `python`

package that provides such a statistical test? I'm open to using `numpy`

, `scipy`

, `scikit-learn`

, etc.

**Add**

I've found a `scipy`

package that apparently does what I need but it only works on 1-D arrays: scipy.stats.ks_2samp. The `R`

statistical software has the ks package which includes the `kde.test`

function. This function does what I need but I'd like a `python`

implementation.

`np.mean()`

) would tell you how far their centers are apart. Calculating the determinant of the covariance matrix (`np.cov()`

) would describe the volume of an approximated ellipsoid. – Dietrich Mar 12 '14 at 20:00`kstest`

module from scipy to do a 'goodness-of-fit' for your matrices. – Signus Mar 12 '14 at 20:24such a statistical testis vague. check stats.stackexchange.com – embert Mar 12 '14 at 21:00