FittingTest_BestModelKolmogorov¶
-
FittingTest_BestModelKolmogorov
(\*args)¶ Select the best model according to the Kolmogorov goodness-of-fit test.
- Parameters
- sample2-d sequence of float
Tested sample.
- modelslist of
Distribution
orDistributionFactory
Tested distributions.
- Returns
- best_model
Distribution
The best distribution for the sample according to Bayesian information criterion. This may raise a warning if the best model does not perform well.
- best_result
TestResult
Best test result.
- best_model
See also
Examples
>>> import openturns as ot >>> ot.RandomGenerator.SetSeed(0) >>> distribution = ot.Normal() >>> sample = distribution.getSample(30) >>> tested_distributions = [ot.ExponentialFactory(), ot.NormalFactory()] >>> best_model, best_result = ot.FittingTest.BestModelKolmogorov(sample, tested_distributions) >>> print(best_model) Normal(mu = -0.0944924, sigma = 0.989808)