# Random from Python Dict with lowest values as priority [duplicate]

Couldn't find this on Google so if anyone can help. I have a dict like this:

{8: 0, 5: 0, 6: 1, 4: 2, 7: 3, 9: 2, 11: 1, 10: 3}

Now I need to take 3 keys out of this dict randomly but also, here is the tricky part, take in consideration their value while doing that. Concretely I want keys that have lower values assigned to them to have bigger priority in random, so in short don't give me a key with value 2/3 if there are 3 keys with values 0/1 available. Now I know I can just sort them by value and take 3 lowest, but that would be predictable so I need any kind of randomizer in here together with taking the lowest ones available. I hope I made some sense... any ideas? Thanks in advance!

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## marked as duplicate by Martijn Pieters♦, MattDMo, asteri, Bas Swinckels, Teja KantamneniDec 10 '13 at 20:11

You are looking for a weighted random. – Martijn Pieters Dec 10 '13 at 17:19
You could apply How can I make a random selection from an inversely-weighted list? to make the invert the weights. – Martijn Pieters Dec 10 '13 at 17:21
Last but not least, you want a weighted sample, not just one value, so look at Weighted random sample in python – Martijn Pieters Dec 10 '13 at 17:26
Ah, you want a random weighted sample without replacement, so use Select random k elements from a list whose elements have weights – Martijn Pieters Dec 10 '13 at 17:45
I apologize for not seeing this was answered before in some way, bad Googling on my side. 1st answer showed me all I needed since indeed all I needed to look is weighted random. Thanks everyone for the help and sry again! – MaRiNkO Dec 10 '13 at 22:25

Combining Select random k elements from a list whose elements have weights with How can I make a random selection from an inversely-weighted list? and applied to your dictionary:

import random
from operator import mul

class Node:
__slots__ = ['w', 'v', 'tw']
def __init__(self, w, v, tw):
self.w, self.v, self.tw = w, v, tw

def rws_heap(items):
h = [None]
for w, v in items:
h.append(Node(w, v, w))
for i in range(len(h) - 1, 1, -1):
h[i>>1].tw += h[i].tw
return h

def rws_heap_pop(h):
gas, i = h[1].tw * random.random(), 1
while gas > h[i].w:
gas -= h[i].w
i <<= 1
if gas > h[i].tw:
gas -= h[i].tw
i += 1
w, v = h[i].w, h[i].v
h[i].w = 0
while i:
h[i].tw -= w
i >>= 1
return v

def random_weighted_sample_no_replacement(items, n):
heap = rws_heap(items)
for i in range(n):
yield rws_heap_pop(heap)

def random_weighted_sample_no_replacements_inverse_weights(mapping, n):
keys, values = zip(*mapping.items())
total = reduce(mul, (v + 1 for v in values))
weights = (total / (v + 1) for v in values)
heap = rws_heap(zip(weights, keys))
for i in xrange(n):
yield rws_heap_pop(heap)

I condensed Jason's Python implementation a little, and inverted your weights by using multiplication (shifting all weights up by 1 to allow for the division trick).

>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[9, 11, 8]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[8, 6, 9]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[4, 8, 5]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[4, 10, 11]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[4, 9, 10]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[5, 10, 8]
>>> list(random_weighted_sample_no_replacements_inverse_weights(d, 3))
[6, 4, 5]

where 8 and 5 show up more often than 7 and 11.

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Awesome! Thanks a bunch! – MaRiNkO Dec 10 '13 at 22:25