polars.Series.kurtosis#
- Series.kurtosis(*, fisher: bool = True, bias: bool = True) float | None [source]#
Compute 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
See scipy.stats for more information
- Parameters:
- 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, the calculations are corrected for statistical bias.
Examples
>>> s = pl.Series("grades", [66, 79, 54, 97, 96, 70, 69, 85, 93, 75]) >>> s.kurtosis() -1.0522623626787952 >>> s.kurtosis(fisher=False) 1.9477376373212048 >>> s.kurtosis(fisher=False, bias=False) 2.1040361802642726