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I'm new to Python and coming from the R world. I'm trying to fit distributions to sample data using SciPy and having good success. I can make return sane results. What I've been unable to do is create the goodness of fit statistics which I'm used to with the fitdistrplus package in R. Is there a common method for comparing "best fit" from a number of different distributions with SciPy?

I'm looking for something like the Kolmogorov-Smirnov test or Cramer-von Mises or Anderson-darling tests

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For which distributions to you need the gof tests? With estimated parameters the distribution of the test statistic is different from the one with fully specified distributions. statsmodels, see John D Cooks' answer, has more in the sandbox and should be available by the end of summer. –  user333700 Jul 2 '12 at 9:58

2 Answers 2

up vote 4 down vote accepted

There's also statmodels goodness of fit tests.

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See the scipy.stats library:

It contains K-S and Anderson-Darling, although apparently not Cramer-von Mises.

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many thanks! I wish I could accept both your answer and John's. –  JD Long Jul 3 '12 at 16:11

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