kurtosis — SciPy v1.15.2 Manual (original) (raw)
scipy.stats.mstats.
scipy.stats.mstats.kurtosis(a, axis=0, fisher=True, bias=True)[source]#
Computes the kurtosis (Fisher or Pearson) of a dataset.
Kurtosis is the fourth central moment divided by the square of the variance. If Fisher’s definition is used, then 3.0 is subtracted from the result to give 0.0 for a normal distribution.
If bias is False then the kurtosis is calculated using k statistics to eliminate bias coming from biased moment estimators
Use kurtosistest to see if result is close enough to normal.
Parameters:
aarray
data for which the kurtosis is calculated
axisint or None, optional
Axis along which the kurtosis is calculated. Default is 0. If None, compute over the whole array a.
fisherbool, optional
If True, Fisher’s definition is used (normal ==> 0.0). If False, Pearson’s definition is used (normal ==> 3.0).
biasbool, optional
If False, then the calculations are corrected for statistical bias.
Returns:
kurtosisarray
The kurtosis of values along an axis. If all values are equal, return -3 for Fisher’s definition and 0 for Pearson’s definition.
Notes
For more details about kurtosis, see scipy.stats.kurtosis.