scipy.stats.percentileofscore¶
- scipy.stats.percentileofscore(a, score, kind='rank')[source]¶
- The percentile rank of a score relative to a list of scores. - A percentileofscore of, for example, 80% means that 80% of the scores in a are below the given score. In the case of gaps or ties, the exact definition depends on the optional keyword, kind. - Parameters: - a : array_like - Array of scores to which score is compared. - score : int or float - Score that is compared to the elements in a. - kind : {‘rank’, ‘weak’, ‘strict’, ‘mean’}, optional - This optional parameter specifies the interpretation of the resulting score: - “rank”: Average percentage ranking of score. In case of
- multiple matches, average the percentage rankings of all matching scores. 
 
- “weak”: This kind corresponds to the definition of a cumulative
- distribution function. A percentileofscore of 80% means that 80% of values are less than or equal to the provided score. 
 
- “strict”: Similar to “weak”, except that only values that are
- strictly less than the given score are counted. 
 
- “mean”: The average of the “weak” and “strict” scores, often used in
- testing. See 
 
 - Returns: - pcos : float - Percentile-position of score (0-100) relative to a. - See also - Examples - Three-quarters of the given values lie below a given score: - >>> from scipy import stats >>> stats.percentileofscore([1, 2, 3, 4], 3) 75.0 - With multiple matches, note how the scores of the two matches, 0.6 and 0.8 respectively, are averaged: - >>> stats.percentileofscore([1, 2, 3, 3, 4], 3) 70.0 - Only 2/5 values are strictly less than 3: - >>> stats.percentileofscore([1, 2, 3, 3, 4], 3, kind='strict') 40.0 - But 4/5 values are less than or equal to 3: - >>> stats.percentileofscore([1, 2, 3, 3, 4], 3, kind='weak') 80.0 - The average between the weak and the strict scores is - >>> stats.percentileofscore([1, 2, 3, 3, 4], 3, kind='mean') 60.0 
