Goodness of fit test for Weibull distribution in python

给你一囗甜甜゛ 提交于 2020-07-21 03:32:42

问题


I have some data that I have to test to see if it comes from a Weibull distribution with unknown parameters. In R I could use https://cran.r-project.org/web/packages/KScorrect/index.html but I can't find anything in Python.

Using scipy.stats I can fit parameters with:

scipy.stats.weibull_min.fit(values)

However in order to turn this into a test I think I need to perform some Monte-Carlo simulation (e.g. https://en.m.wikipedia.org/wiki/Lilliefors_test) I am not sure what to do exactly.

How can I make such a test in Python?


回答1:


The Lilliefors test is implemented in OpenTURNS. To do this, all you have to use the Factory which corresponds to the distribution you want to fit. In the following script, I simulate a Weibull sample with size 10 and perform the Kolmogorov-Smirnov test using a sample size equal to 1000. This means that the KS statistics is simulated 1000 times.

import openturns as ot
sample=ot.WeibullMin().getSample(10)
ot.ResourceMap.SetAsUnsignedInteger("FittingTest-KolmogorovSamplingSize",1000)
distributionFactory = ot.WeibullMinFactory()
dist, result = ot.FittingTest.Kolmogorov(sample, distributionFactory, 0.01)
print('Conclusion=', result.getBinaryQualityMeasure())
print('P-value=', result.getPValue())

More details can be found at:

  • http://openturns.github.io/openturns/latest/examples/data_analysis/kolmogorov_test.html
  • http://openturns.github.io/openturns/latest/examples/data_analysis/kolmogorov_distribution.html



回答2:


One way around: estimate distribution parameters, draw data from the estimated distribution and run KS test to check that both samples come from the same distribution.

Let's create some "original" data:

>>> values = scipy.stats.weibull_min.rvs( 0.33, size=1000)

Now,

>>> args = scipy.stats.weibull_min.fit(values)
>>> print(args)
(0.32176317627928856, 1.249788665927261e-09, 0.9268793667654682)

>>> scipy.stats.kstest(values, 'weibull_min', args=args, N=100000)

KstestResult(statistic=0.033808945722737016, pvalue=0.19877935361964738)

The last line is equivalent to:

 scipy.stats.ks_2samp(values, scipy.stats.weibull_min.rvs(*args, size=100000))

So, once you estimate parameters of the distribution, you can test it pretty reliably. But the scipy estimator is not very good, it took me several runs to get even "close" to the original distribution.



来源:https://stackoverflow.com/questions/57354430/goodness-of-fit-test-for-weibull-distribution-in-python

易学教程内所有资源均来自网络或用户发布的内容,如有违反法律规定的内容欢迎反馈
该文章没有解决你所遇到的问题?点击提问,说说你的问题,让更多的人一起探讨吧!