scipy.stats.normaltest¶
- scipy.stats.normaltest(a, axis=0, nan_policy='propagate')[source]¶
Tests whether a sample differs from a normal distribution.
This function tests the null hypothesis that a sample comes from a normal distribution. It is based on D’Agostino and Pearson’s [R419], [R420] test that combines skew and kurtosis to produce an omnibus test of normality.
Parameters: a : array_like
The array containing the data to be tested.
axis : int or None, optional
Axis along which to compute test. Default is 0. If None, compute over the whole array a.
nan_policy : {‘propagate’, ‘raise’, ‘omit’}, optional
Defines how to handle when input contains nan. ‘propagate’ returns nan, ‘raise’ throws an error, ‘omit’ performs the calculations ignoring nan values. Default is ‘propagate’.
Returns: statistic : float or array
s^2 + k^2, where s is the z-score returned by skewtest and k is the z-score returned by kurtosistest.
pvalue : float or array
A 2-sided chi squared probability for the hypothesis test.
References
[R419] (1, 2) D’Agostino, R. B. (1971), “An omnibus test of normality for moderate and large sample size,” Biometrika, 58, 341-348 [R420] (1, 2) D’Agostino, R. and Pearson, E. S. (1973), “Testing for departures from normality,” Biometrika, 60, 613-622