scipy.stats.shapiro¶
- scipy.stats.shapiro(x, a=None, reta=False)[source]¶
- Perform the Shapiro-Wilk test for normality. - The Shapiro-Wilk test tests the null hypothesis that the data was drawn from a normal distribution. - Parameters: - x : array_like - Array of sample data. - a : array_like, optional - Array of internal parameters used in the calculation. If these are not given, they will be computed internally. If x has length n, then a must have length n/2. - reta : bool, optional - Whether or not to return the internally computed a values. The default is False. - Returns: - W : float - The test statistic. - p-value : float - The p-value for the hypothesis test. - a : array_like, optional - If reta is True, then these are the internally computed “a” values that may be passed into this function on future calls. - See also - Notes - The algorithm used is described in [R437] but censoring parameters as described are not implemented. For N > 5000 the W test statistic is accurate but the p-value may not be. - The chance of rejecting the null hypothesis when it is true is close to 5% regardless of sample size. - References - [R434] - http://www.itl.nist.gov/div898/handbook/prc/section2/prc213.htm - [R435] - Shapiro, S. S. & Wilk, M.B (1965). An analysis of variance test for normality (complete samples), Biometrika, Vol. 52, pp. 591-611. - [R436] - Razali, N. M. & Wah, Y. B. (2011) Power comparisons of Shapiro-Wilk, Kolmogorov-Smirnov, Lilliefors and Anderson-Darling tests, Journal of Statistical Modeling and Analytics, Vol. 2, pp. 21-33. - [R437] - (1, 2) ALGORITHM AS R94 APPL. STATIST. (1995) VOL. 44, NO. 4. - Examples - >>> from scipy import stats >>> np.random.seed(12345678) >>> x = stats.norm.rvs(loc=5, scale=3, size=100) >>> stats.shapiro(x) (0.9772805571556091, 0.08144091814756393) 
