Linear regression of arrays containing NANs in Python/Numpy

I have two arrays, say varx and vary. Both contain NAN values at various positions. However, I would like to do a linear regression on both to show how much the two arrays correlate. This was very helpful so far: http://glowingpython.blogspot.de/2012/03/linear-regression-with-numpy.html

However, using this:

``````slope, intercept, r_value, p_value, std_err = stats.linregress(varx, vary)
``````

results in nans for every output variable. What is the most convenient way to take only valid values from both arrays as input to the linear regression? I heard about masking arrays, but am not sure how it works exactly.

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Are the NaNs in the same or different positions in the two arrays? –  ecatmur Nov 30 '12 at 10:33
At different/random positions throughout both arrays. –  HyperCube Nov 30 '12 at 10:40

You can remove NaNs using a mask:

``````mask = ~np.isnan(varx) & ~np.isnan(vary)
``````
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Works perfectly! Didn't know the ~ operator means "is not". –  HyperCube Nov 30 '12 at 10:44
@HyperCube careful with that, it only means "is not" for NumPy arrays (it's an abuse of the normal meaning, which is the bitwise not operator). See stackoverflow.com/questions/13600988/… –  ecatmur Nov 30 '12 at 10:52
To be fair, it's not that much of an abuse if masks are thought of in the old-school sense of bitmasks –  acjay Nov 30 '12 at 11:32