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# python ranking a list of values, using average rank for non-unique values

Is there a more pythonic, faster want to rank a dictionary by values and average the rank for the non unique values. My approach:

``````d = {'a':5,'b':5,'c':5,'d':1,'e':6}
ordered_keys = sorted(d, key=d.get)
ordered_v = [d[k] for k in ordered_keys]
value_rank = [(ordered_v.index(v)+1)+(ordered_v.count(v)-1)/2 for v in ordered_v]
ranked_key_list = zip(ordered_keys,value_rank)
[('d', 1), ('a', 3), ('c', 3), ('b', 3), ('e', 5)]
``````

This broad discussion on sorting dictionaries was very helpful: python dictionary values sorting

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@the_wolf thanks for point that out. I don't in my code. I was trying to make things clear – Cole Dec 7 '12 at 20:39

the bottleneck of your algorithmn is the fact that .index and .count are O(n), therefore your bottle neck is this line:

``````value_rank = [(ordered_v.index(v)+1)+(ordered_v.count(v)-1)/2 for v in ordered_v]
``````

causing your overall performance to be O(n^2)

I have made a O(n*log(n)) algorithm for you (the bottle neck is now the sorting):

``````import collections

d = {'a':5,'b':5,'c':5,'d':1,'e':6}
my_d = collections.defaultdict(list)
for key, val in d.items():
my_d[val].append(key)

ranked_key_list = []
n = v = 1
for _, my_list in sorted(my_d.items()):
v = n + (len(my_list)-1)/2
for e in my_list:
n += 1
ranked_key_list.append((e, v))
``````
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What's the n in your O(n)? Surely it can't be the number of items in the dict, as `sorted()` is O(n*lg(n)). – lqc Dec 7 '12 at 21:47
Awesome answer. Thanks azorius! – Cole Dec 7 '12 at 21:49
@Cole as you can see from lqc, I lied the line is now O(n) instead of O(n^2) but the algorithm overall is still O(nlog(n)) because of the sorting – jcr Dec 7 '12 at 22:00
Thanks a lot! I actually needed exactly that solution for my problem. – fsociety Mar 11 '13 at 14:01
I just have one addition: You need to change the division to 2. in order to get the real average rank if that's your goal. – fsociety Mar 11 '13 at 14:09

What you have is pretty good, I doubt there is a solution that is much shorter.

As for efficiency, the repeated use of `list.index()` and `list.count()` might slow this down for large data sets.

Here is an alternative implementation that should be more efficient if you are doing this for a lot of data:

``````from itertools import groupby

d = {'a':5,'b':5,'c':5,'d':1,'e':6}
ranked_key_list = []
i = 1
for k, g in groupby(sorted(d.keys(), key=d.get), key=d.get):
g = list(g)
rank = i + (len(g)-1) / 2
ranked_key_list.extend((k, rank) for k in g)
i += len(g)
``````
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This is almost an identical algorithm to the accepted answer, but should be faster as it uses `groupby` to group the keys. If there are many repeated keys, this could be slower however (as it sorts the whole key list instead of just the sets of repeated keys). – drevicko Apr 21 '14 at 23:07
``````key_list = zip(dict.keys(), dict.values())
ranked_key_list = sorted(key_list, key=lambda x: x[1])
``````

edit: just realized I didn't do the average value thing.... could you clarify a little more? how is the average of 3 5s = 3??

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it's not the average it's the average rank, so the lowest = 1 and the highest = length, so 1 = 1, all the 5= 3 because the 5 are ranked 2 3 and 4 and (2+3+4)/3 = 3 - also: dict.items() is the same as your zip line – jcr Dec 7 '12 at 20:40
@cameron the ranking of the keys without averaging would be [('d',1),('a',2),('b',3),('c',4),('e',5)]. 'a','b','c' have the same values. Their average rank is the average of [2,3,4] – Cole Dec 7 '12 at 20:41
eesh, I think what you've got is about as good as it gets – Cameron Sparr Dec 7 '12 at 20:52