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I'm going through a list of individual words and creating a dictionary where the word is the key, and the index of the word is the value.

dictionary = {}
for x in wordlist:
    dictionary[x] = wordlist.index(x)

This works fine at the moment, but I want more indexes to be added for when the same word is found a second, or third time etc. So if the phrase was "I am going to go to town", I would be looking to create a dictionary like this:

{'I': 0, 'am' : 1, 'going' : 2, 'to': (3, 5), 'go' : 4, 'town' : 6}

So I suppose I need lists inside the dictionary? And then to append more indexes to them? Any advice on how to accomplish this would be great!

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4  
I'm not sure what the problem you're facing is. You can store lists in a dictionary the same way you're already storing numbers in your original code, and you can append to them like you'd append to any list. (That said, defaultdict would be a good idea here.) –  millimoose Aug 8 '13 at 23:34

5 Answers 5

You can do this way:

dictionary = {}
for i, x in enumerate(wordlist):
    dictionary.setdefault(x, []).append(i)

Explanation:

  • You do not need the call to index(). It is more efficient and cooler to use enumerate().
  • dict.setdefault() uses the first argument as key. If it is not found, inserts the second argument, else it ignores it. Then it returns the (possibly newly inserted) value.
  • list.append() appends the item to the list.

You will get something like this:

{'I': [0], 'am' : [1], 'going' : [2], 'to': [3, 5], 'go' : [4], 'town' : [6]}

With lists instead of tuples, and using lists even if it is only one element. I really think it is better this way.

UPDATE:

Inspired shamelessly by the comment by @millimoose to the OP (thanks!), this code is nicer and faster, because it does not build a lot of [] that are never inserted in the dictionary:

import collections
dictionary = collections.defaultdict(list)
for i, x in enumerate(wordlist):
    dictionary[x].append(i)
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Actually, the defaultdict may be slower, rather than faster (because it ends up doing lots of calls to a __missing__ method implemented in Python), but I doubt there will be much difference either way. And, more importantly, I doubt it will matter in the OP's real-life code. Just use whichever one is more readable. –  abarnert Aug 8 '13 at 23:51
    
From a quick test (with a random.shuffled N copies of /usr/share/dict/words), defaultdict is about 30% faster in CPython 3.3, and 20% slower in PyPy 2.0. I actually expected the opposite… but either way, it shows that (a) the difference is pretty small, and (b) you shouldn't rely on your intuition (or, worse, mine!) if you really need to optimize. –  abarnert Aug 8 '13 at 23:53
    
@abarnert: Actually I assumed it was faster because of the docs about defaultdict: "This technique is simpler and faster than an equivalent technique using dict.setdefault()". Maybe the specifics depend on the ratio of keys / values. –  rodrigo Aug 9 '13 at 0:24
    
That makes sense. With almost all unique keys there's little benefit to doing O(M+N/M) instead of O(N) so the constant factor dominates; with very few unique keys it's the other way around. If it matter, I'd do more tests to work out the details. But anyway, when the answers I get come out -20% to +30% for everything I throw at it, that's usually good enough to say "Probably doesn't matter, and if it does, I'd better test with real data", right? –  abarnert Aug 9 '13 at 0:50
>>> wl = ['I', 'am', 'going', 'to', 'go', 'to', 'town']
>>> {w: [i for i, x in enumerate(wl) if x == w] for w in wl}
{'town': [6], 'I': [0], 'am': [1], 'to': [3, 5], 'going': [2], 'go': [4]}
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1  
This works, but it's quadratic instead of linear. For example, with 20 copies of /usr/share/dict, while rodrigo's two answers take on the order of 3 seconds, your takes many minutes. –  abarnert Aug 8 '13 at 23:56
    
Could do ... w in set(wl)} –  dansalmo Aug 9 '13 at 0:02
    
But then you don't get the index to insert. enumerate(set(wl)) will give you arbitrary numbers; set(enumerate(wl)) won't uniquify. You'd need to DSU things into, e.g., a dict mapping values to indices, at which point you've made things far more complicated than the defaultdict version. –  abarnert Aug 9 '13 at 0:45
    
@abarnert: @dansalmo surely meant to apply set only to wl's final occurrence, not to the one inside enumerate, as in: {w: [i for i, x in enumerate(wl) if x == w] for w in set(wl)}. This can reduce execution time a bit, but is still O(n^2). –  Mario Rossi Aug 9 '13 at 0:52
    
@MarioRossi: Well, I guess you can get it down to O(nm) (where m is the number of unique values)… but yeah, that's still not remotely acceptable. –  abarnert Aug 9 '13 at 1:02

Objects are objects, regardless of where they are.

dictionary[x] = []
 ...
dictionary[x].append(y)
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import collections
dictionary= collections.defaultdict(list)
for i, x in enumerate( wordlist ) : 
    dictionary[x].append( i )
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Exactly the same as @rodrigo's update –  Mario Rossi Aug 9 '13 at 0:25

A possible solution:

dictionary= {}
for i, x in enumerate(wordlist):
    if not x in dictionary : dictionary[x]= []
    dictionary[x].append( i )
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1  
this will throw a KeyError if dictionary[x] is not yet defined –  Stuart Aug 8 '13 at 23:37
    
You probably wanted if not x in dictionary:, or maybe if dictionary.get(x, None) == None:. But either way, while that will give you the correct answer, it's not the best way to do it. –  abarnert Aug 8 '13 at 23:49
    
Also, you almost never want to do == None instead of is None. –  abarnert Aug 8 '13 at 23:54
    
@Stuart & @abarnert: Absolutely right. Corrections done. None is the default value for get's second parameter, though. So dictionary.get(x) is None would have worked perfectly. –  Mario Rossi Aug 8 '13 at 23:59

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