# Calculate poisson probability percentage

When you use the POISSON function in Excel (or in OpenOffice Calc), it takes two arguments:

• an integer
• an 'average' number

and returns a float.

In Python (I tried RandomArray and NumPy) it returns an array of random poisson numbers. What I really want is the percentage that this event will occur (it is a constant number and the array has every time different numbers - so is it an average?).

for example:

``````print poisson(2.6,6)
``````

returns `[1 3 3 0 1 3]` (and every time I run it, it's different).

The number I get from calc/excel is 3.19 (`POISSON(6,2.16,0)*100`).

Am I using the python's poisson wrong (no pun!) or am I missing something?

`scipy` has what you want

``````>>> scipy.stats.distributions
<module 'scipy.stats.distributions' from '/home/coventry/lib/python2.5/site-packages/scipy/stats/distributions.pyc'>
>>> scipy.stats.distributions.poisson.pmf(6, 2.6)
array(0.031867055625524499)
``````

It's worth noting that it's pretty easy to calculate by hand, too.

• Alternative import would be: `from scipy.stats import poisson` then `poisson.pmf(6, 2.6)` = 0.031867055625524499 Sep 18, 2017 at 21:59

It is easy to do by hand, but you can overflow doing it that way. You can do the exponent and factorial in a loop to avoid the overflow:

``````def poisson_probability(actual, mean):
# naive:   math.exp(-mean) * mean**actual / factorial(actual)

# iterative, to keep the components from getting too large or small:
p = math.exp(-mean)
for i in xrange(actual):
p *= mean
p /= i+1
return p
``````

This page explains why you get an array, and the meaning of the numbers in it, at least.