# Poisson simulation not working as expected?

I have a simple script to set up a Poisson distribution by constructing an array of "events" of probability = 0.1, and then counting the number of successes in each group of 10. It almost works, but the distribution is not quite right (P(0) should equal P(1), but is instead about 90% of P(1)). It's like there's an off-by-one kind of error, but I can't figure out what it is. The script uses the Counter class from here (because I have Python 2.6 and not 2.7) and the grouping uses itertools as discussed here. It's not a stochastic issue, repeats give pretty tight results, and the overall mean looks good, group size looks good. Any ideas where I've messed up?

``````from itertools import izip_longest
import numpy as np
import Counter

def groups(iterable, n=3, padvalue=0):
"groups('abcde', 3, 'x') --> ('a','b','c'), ('d','e','x')"

def event():
f = 0.1
r = np.random.random()
if r < f:  return 1
return 0

L = [event() for i in range(100000)]
rL = [sum(g) for g in groups(L,n=10)]
print len(rL)
print sum(list(L))

C = Counter.Counter(rL)
for i in range(max(C.keys())+1):
print str(i).rjust(2), C[i]

\$ python script.py
10000
9949
0 3509
1 3845
2 1971
3 555
4 104
5 15
6 1
\$ python script.py
10000
10152
0 3417
1 3879
2 1978
3 599
4 115
5 12
``````
-
You don't have a Poisson distribution here, only an approximation to one. You're computing a (Bernoulli?) distribution with n = 10, p = 0.1. As p goes to 0, holding np = 1, you get a Poisson distribution. I'd advise trying stats.stackexchange.com to see if this distribution is reasonable. –  David Thornley Nov 9 '10 at 17:01
I +1 you for math on stack overflow. –  Dave Aaron Smith Nov 9 '10 at 17:23
<whacks self on head> Sounds right. Silly mistake. –  telliott99 Nov 9 '10 at 17:50

``````.9^10 = 0.34867844 = probability of 0 events
``````.1 * .9^10 * (10 choose 1) = 0.34867844 = incorrect probability of 1 event