I'm writing an application that needs to read a list of strings from a file, save them in a data structure, and then look up those strings by prefixes. The list of strings is simply a list of words in a given language. For example, if the search function gets "stup" as a parameter, it should return ["stupid", "stupidity", "stupor"...]. It should do so in O(log(n)*m) time, where n is the size of the data structure and m is the number of results and should be as fast as possible. Memory consumption is not a big issue right now. I'm writing this in python, so it would be great if you could point me to a suitable data structure (preferably) implemented in c with python wrappers.
4 Answers
You want a trie.
http://en.wikipedia.org/wiki/Trie
I've used them in Scrabble and Boggle programs. They're perfect for the use case you described (fast prefix lookup).
Here's some sample code for building up a trie in Python. This is from a Boggle program I whipped together a few months ago. The rest is left as an exercise to the reader. But for prefix checking you basically need a method that starts at the root node (the variable words
), follows the letters of the prefix to successive child nodes, and returns True if such a path is found and False otherwise.
class Node(object):
def __init__(self, letter='', final=False):
self.letter = letter
self.final = final
self.children = {}
def __contains__(self, letter):
return letter in self.children
def get(self, letter):
return self.children[letter]
def add(self, letters, n=1, index=0):
if n < 0: n = len(letters)
if index >= n: return
letter = letters[index]
if letter in self.children:
child = self.children[letter]
else:
child = Node(letter, index==n1)
self.children[letter] = child
child.add(letters, n, index+1)
def load_dictionary(path):
result = Node()
for line in open(path, 'r'):
word = line.strip().lower()
result.add(word)
return result
words = load_dictionary('dictionary.txt')

I'd be tempted to write Node.add() as an iterative method: def add(self, letters): next = self n = len(letters) for index, letter in enumerate(letters): if not (letter in next.children): next.children[letter] = Node(letter, index==n1) next = next.children[letter] Jul 15, 2009 at 13:00

But try to imagine that with correct indentation and line breaks. Jul 15, 2009 at 13:02

Also see "DAWG", which is a trie that uses less memory. But it's complicated to construct (at least compared to a trie).– FantiusMay 21, 2011 at 2:30
A trie (or prefix tree) sounds right up your alley. It can do the search on a prefix string of length m in O(m) I believe.
string array.
then binary search through it to search the first match then step one by one through it for all subsequent matches
(i originally had linked list here too... but of course this doesn't have random access so this was 'bs' (which probably explains why I was downvoted). My binary search algorithm still is the fastest way to go though

@reinier  I imagine you got downvoted because linked lists are not good for random access, so your search time is linear in the number of elements. An array would be quick(ish) if it was already sorted, but it'd be O(log n), whereas a trie is O(m), where m is the length of the prefix. Jul 15, 2009 at 14:32

yes true. It needs randomaccess (or else th binary search would not work) ;^) so yes array is the only sane choice– ToadJul 15, 2009 at 14:36

A trie is better because lookups are O(m) where m is the length of the key (the length of a word, so probably less than 10 characters) where as a binary search will be O(mlog(n)) where n is the size of the whole dictionary (and note that m is still present). So a trie scales very well even with very long word lists. Jul 15, 2009 at 15:05