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I have some text:

 s="Imageclassificationmethodscan beroughlydividedinto two broad families of approaches:"

I'd like to parse this into its individual words. I quickly looked into the enchant and nltk, but didn't see anything that looked immediately useful. If I had time to invest in this, I'd look into writing a dynamic program with enchant's ability to check if a word was english or not. I would have thought there'd be something to do this online, am I wrong?

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You could encode your dictionary of words as a trie and use a greedy algorithm: pull the longest word that matches and then go on to the next word, backtracking on failure. Probably not optimal. Try this for recommendations on data structures: kmike.ru/python-data-structures –  hughdbrown Mar 12 '13 at 15:14
Interesting question. I'd guess the answer ("easy way") is going to be "no". –  Tim Pietzcker Mar 12 '13 at 15:15
Similar question asked before that didn't have much luck: stackoverflow.com/questions/13034330/… –  Jon Clements Mar 12 '13 at 15:15
For example, how would your algorithm know that it's not be roughly divide din to? They are all correct English words... –  Tim Pietzcker Mar 12 '13 at 15:21
@Tim Pietzcker: Because that is not the greedy approach. "Greed, for lack of a better word, is good. Greed is right. Greed works." en.wikipedia.org/wiki/… –  hughdbrown Mar 12 '13 at 15:34

2 Answers 2

up vote 8 down vote accepted

Greedy approach using trie

Try this using Biopython (pip install biopython):

from Bio import trie
import string

def get_trie(dictfile='/usr/share/dict/american-english'):
    tr = trie.trie()
    with open(dictfile) as f:
        for line in f:
            word = line.rstrip()
                word = word.encode(encoding='ascii', errors='ignore')
                tr[word] = len(word)
                assert tr.has_key(word), "Missing %s" % word
            except UnicodeDecodeError:
    return tr

def get_trie_word(tr, s):
    for end in reversed(range(len(s))):
        word = s[:end + 1]
        if tr.has_key(word): 
            return word, s[end + 1: ]
    return None, s

def main(s):
    tr = get_trie()
    while s:
        word, s = get_trie_word(tr, s)
        print word

if __name__ == '__main__':
    s = "Imageclassificationmethodscan beroughlydividedinto two broad families of approaches:"
    s = s.strip(string.punctuation)
    s = s.replace(" ", '')
    s = s.lower()


>>> if __name__ == '__main__':
...     s = "Imageclassificationmethodscan beroughlydividedinto two broad families of approaches:"
...     s = s.strip(string.punctuation)
...     s = s.replace(" ", '')
...     s = s.lower()
...     main(s)


There are degenerate cases in English that this will not work for. You need to use backtracking to deal with those, but this should get you started.

Obligatory test

>>> main("expertsexchange")
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Wonderful. This is just what I wanted! –  Erotemic Mar 14 '13 at 15:44

This is sort of a problem that occurs often in Asian NLP. If you have a dictionary, then you can use this http://code.google.com/p/mini-segmenter/ (Disclaimer: i wrote it, hope you don't mind).

Note that the search space might be extremely large because the number of characters in alphabetic English is surely longer than syllabic chinese/japanese.

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