Consider the following Python code:

```
In [1]: import numpy as np
In [2]: import scipy.stats as stats
In [3]: ar = np.array([0.8389, 0.5176, 0.1867, 0.1953, 0.4153, 0.6036, 0.2497, 0.5188, 0.4723, 0.3963])
In [4]: x = ar[-1]
In [5]: stats.percentileofscore(ar, x, kind='strict')
Out[5]: 30.0
In [6]: stats.percentileofscore(ar, x, kind='rank')
Out[6]: 40.0
In [7]: stats.percentileofscore(ar, x, kind='weak')
Out[7]: 40.0
In [8]: stats.percentileofscore(ar, x, kind='mean')
Out[8]: 35.0
```

The *kind* argument represents the interpretation of the resulting score.

Now when I use Excel's PERCENTRANK function with the same data, I get 0.3333. This appears to be correct as there are 3 values less than x=0.3963.

Can someone explain why I'm getting inconsistent results?

`In[6]`

was probably using`kind='rank'`

. I don't think you got two different results with the same parameters.) – Sven Marnach Nov 15 '11 at 15:21`kind='rank'`

in`In[6]`

. Copy/paste error. I edited the post. – strimp099 Nov 15 '11 at 15:32`0.8389, 0.5176, 0.1867, 0.1953, 0.4153, 0.6036, 0.2497, 0.5188, 0.4723, 0.3963`

in column A so that 0.8389 is in A1 through 0.3963 in A10. Then I did =PERCENTRANK(A1:A10,A10) which returned 0.3333. It appears that Scipy does`(number of values above X) / (total values)`

which in this case is`3/10=0.3`

where Excel does`(number of values above X) / (total values-1)`

which in this case is`3/9=0.3333`

. – strimp099 Nov 15 '11 at 15:49