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How can I use scipy.stats.kde.gaussian_kde and scipy.stats.kstest in a conformal way?

For example, the code:

from numpy import inf
import scipy.stat
my_pdf = scipy.stats.kde.gaussian_kde(sample)
scipy.stats.kstest(sample, lambda x: my_pdf.integrate_box_1d(-inf, x))

Gives the following answer: (0.5396735893479544, 0.0)

Which is not true because a sample obviously belongs to the distribution which was constructed on this sample.

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how did you create your sample? How many observations? It could be that gaussian_kde doesn't match the sample well enough. For example if the sample is bimodal. – user333700 Mar 22 '13 at 4:04
@user333700 Gaussian KDE works just fine for multimodal distributions. When the cdf function is passed properly as in my answer it gets a very low test statistic. – Dougal Mar 22 '13 at 5:24
@Dougal gaussian_kde oversmooths mixture distributions like in the last example here . In this case any goodness of fit test will fail with large enough sample size. – user333700 Mar 23 '13 at 14:23
@user333700 Yes, KDE often oversmooths. Yes, it's the wrong thing to do in this case, as I point out in my answer. But the real problem is almost certainly that OP is calling it incorrectly, as I show in my answer, which gets exaclty the result he gets. KDE's problems are not going to get you a 0.5 difference between the true and empirical CDFs in a 1d case with more than a handful of samples; that's insane. – Dougal Mar 23 '13 at 18:55

First of all, the right test to use for testing if two samples may have come from the same distribution is the two-sample KS test, implemented in scipy.stats.ks_2samp, which directly compares the empirical CDFs. KDE is density estimation, which smooths out the CDF, and is therefore a bunch of unnecessary work that also makes your estimate worse, statistically speaking.

But the reason you're seeing this problem is that the signature for your CDF parameter isn't quite right. kstest calls cdf(vals) (source), where vals is the sorted samples, to get out the CDF value for each of your samples. In your code, this ends up calling my_pdf.integrate_box_1d(-np.inf, samps), but integrate_box_1d wants both arguments to be scalars. The signature is wrong, and if you tried this with most arrays it'd crash with a ValueError:

>>> my_pdf.integrate_box_1d(-np.inf, samp[:10])
ValueError                                Traceback (most recent call last)
<ipython-input-38-81d0253a33bf> in <module>()
----> 1 my_pdf.integrate_box_1d(-np.inf, samp[:10])

/Library/Python/2.7/site-packages/scipy-0.12.0.dev_ddd617d_20120725-py2.7-macosx-10.8-x86_64.egg/scipy/stats/kde.pyc in integrate_box_1d(self, low, high)
    312         normalized_low = ravel((low - self.dataset) / stdev)
--> 313         normalized_high = ravel((high - self.dataset) / stdev)
    315         value = np.mean(special.ndtr(normalized_high) - \

ValueError: operands could not be broadcast together with shapes (10) (1,1000) 

but unfortunately, when the second argument is samp, it can broadcast just fine since the arrays are the same shape, and then everything goes to hell. Presumably integrate_box_1d should check the shape of its arguments, but here's one way to do it correctly:

>>> my_cdf = lambda ary: np.array([my_pdf.integrate_box_1d(-np.inf, x) for x in ary])
>>> scipy.stats.kstest(sample, my_cdf)
(0.015597917205996903, 0.96809912578616597)

You could also use np.vectorize if you felt like it.

(But again, you probably actually want to use ks_2samp.)

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