# Python: value that occurs the most in a list

I have a two list as follows

``````x = ['a','a','b','c','b','a']
``````

and

``````x = ['a','a','b','c','c','d']
``````

Thanks to Rohit I have found that this works for the second x value.

``````from collections import Counter
count = counter(x)
count.most_common()
``````

``````mc = [i for i,z in count.most_common() if z == 3]
``````

but I still need to input `z == 3` to get the most common. Is there anyway to make `z == 3` into something like `max(z)`

-
"for i in k" == "for i in []" (won't run) This said, you can check: docs.python.org/dev/library/collections#collections.Counter –  BorrajaX Dec 4 '12 at 16:34
`from collections import Counter; print Counter(x).most_common()[0]` –  Martijn Pieters Dec 4 '12 at 16:35
@MartjinPieters: `.most_common(1)` (`max()` can be faster than `sorted(reverse=True)[0]` –  J.F. Sebastian Dec 4 '12 at 16:57

You can use `Counter` module from `collections`, if you want to find the occurrences of each element in the list: -

``````>>> x = ['a','a','b','c','c','d']

>>> from collections import Counter
>>> count = Counter(x)
>>> count
Counter({'a': 2, 'c': 2, 'b': 1, 'd': 1})
>>> count.most_common()
[('a', 2), ('c', 2), ('b', 1), ('d', 1)]
``````

So, the first two elements are most common in your list.

``````>>> count.most_common()[0]
('a', 2)
>>> count.most_common()[1]
('c', 2)
``````

or, you also pass parameter to `most_common()` to specify how many `most-common` elements you want: -

``````>>> count.most_common(2)
[('a', 2), ('c', 2)]
``````

Update : -

You can also find out the `max` count first, and then find total number of elements with that value, and then you can use it as parameter in `most_common()`: -

``````>>> freq_list = count.values()
>>> freq_list
[2, 2, 1, 1]
>>> max_cnt = max(freq_list)
>>> total = freq_list.count(max_cnt)

>>> most_common = count.most_common(total)
[('a', 2), ('c', 2)]

>>> [elem[0] for elem in most_common]
['a', 'c']
``````
-
why would someone rename Counter as cntr? This is very unpythonic. –  JBernardo Dec 4 '12 at 16:44
it not necessary using slice to get most commont in the list. just supplment n in most_common(n) –  Shawn Zhang Dec 4 '12 at 16:44
@ShawnZhang.. Yeah right. I just used it, because there were two most common elements. I'll add it though. –  Rohit Jain Dec 4 '12 at 16:45
Note: if `len(x)` is large then `count.most_common(2)` is more efficient than `count.most_common()[:2]` –  J.F. Sebastian Dec 4 '12 at 16:53
is there any way to change `x` but make sure that even if there is only 1 or more than 1 most common that it still produces all most commons? –  Keenan Dec 4 '12 at 16:53

Here is another solution:

``````max(zip((x.count(item) for item in set(x)), set(x)))
``````

First, we get a collection containing no duplicate elements using set.

``````>>> set(x)
{'a', 'c', 'b'}
``````

Then, we count how many times each element is in x. This will return a generator object, you can make it a list to see its values (by using "[ ... ]" instead of "( ... )" ), it would return [3, 1, 2].

``````>>> (x.count(item) for item in set(x))
``````

Then, we take the counts and pair it with the elements using zip. The number of occurrences first, for the next step. You can see its value by using list( ... ) on it, it would return [(3, 'a'), (1, 'c'), (2, 'b')].

``````>>> zip((x.count(item) for item in set(x)), set(x))
``````

Finally, we find which of the pairs occurs most times using max.

``````>>> max(zip((x.count(item) for item in set(x)), set(x)))
(3, 'a')
``````

As for the second value, the solution is a bit lengthier. The above is used within a list comprehension:

``````>>> [mitem for mitem in zip((x.count(item) for item in set(x)),set(x)) if mitem[0] == max((x.count(item) for item in set(x)))]
[(2, 'a'), (2, 'c')]
``````
-
yes, just add [-1] at the end (to get the last element) –  Milton Segura Dec 4 '12 at 17:43
Right after the statement, following the three parentheses. Example: ...)))[-1] –  Milton Segura Dec 4 '12 at 18:18
The solution is `O(N**4)` it is unreasonable even for moderate-sized lists e.g., `N=1000` it would require `~10**12` operations. You could easily improve it to `O(N**2)` that is still bad in comparison with `Counter()` which provides `O(N*log m)` time complexity where `m` is the number of most common elements. –  J.F. Sebastian Dec 4 '12 at 21:54