# Scipy Normaltest how is it used?

I need to use normaltest in scipy for testing if the dataset is normal distributet. But I cant seem to find any good examples how to use `scipy.stats.normaltest`.

My dataset has more than 100 values.

``````In : import scipy.stats as stats

In : x = stats.norm.rvs(size = 100)

In : stats.normaltest(x)
Out: (1.627533590094232, 0.44318552909231262)
``````

`normaltest` returns a 2-tuple of the chi-squared statistic, and the associated p-value. Given the null hypothesis that `x` came from a normal distribution, the p-value represents the probability that a chi-squared statistic that large (or larger) would be seen.

If the p-val is very small, it means it is unlikely that the data came from a normal distribution. For example:

``````In : y = stats.uniform.rvs(size = 100)

In : stats.normaltest(y)
Out: (31.487039026711866, 1.4543748291516241e-07)
``````
• How do we quantify "very small" here? Jul 8, 2015 at 10:21
• It is an arbitrary choice: stats.stackexchange.com/a/55693/842. Just be sure to you decide what your signficance level is before applying a statistical test. Jul 8, 2015 at 10:30

First i found out that scipy.stats.normaltest is almost the same. The mstats library is used for masked arrays. Arrays where you can mark values as invalid and not taken into the calculation.

``````import numpy as np
import numpy.ma as ma
from scipy.stats import mstats

x = np.array([1, 2, 3, -1, 5, 7, 3]) #The array needs to be larger than 20, just an example
• Why `< 0.055` instead of `< 0.05`?