scipy.stats.mstats.kurtosis¶
- 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: - a : array - data for which the kurtosis is calculated - axis : int or None, optional - Axis along which the kurtosis is calculated. Default is 0. If None, compute over the whole array a. - fisher : bool, optional - If True, Fisher’s definition is used (normal ==> 0.0). If False, Pearson’s definition is used (normal ==> 3.0). - bias : bool, optional - If False, then the calculations are corrected for statistical bias. - Returns: - kurtosis : array - 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 stats.kurtosis. 
