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I am using this python library that implements the Aho-Corasick string searching algorithm that finds a set of patterns in a given string in one pass. The output is not what I am expecting:

In [4]: import ahocorasick
In [5]: import collections

In [6]: tree = ahocorasick.KeywordTree()

In [7]: ss = "this is the first sentence in this book the first sentence is really the most interesting the first sentence is always first"

In [8]: words = ["first sentence is", "first sentence", "the first sentence", "the first sentence is"]

In [9]: for w in words:
   ...:     tree.add(w)

In [10]: tree.make()

In [13]: final = collections.defaultdict(int)

In [15]: for match in tree.findall(ss, allow_overlaps=True):
   ....:     final[ss[match[0]:match[1]]] += 1

In [16]: final
{   'the first sentence': 3, 'the first sentence is': 2}

The output I was expecting was this:

  'the first sentence': 3,
  'the first sentence is': 2,
  'first sentence': 3,
  'first sentence is': 2

Am I missing something? I am doing this on large strings so post processing is not my first option. Is there a way to get the desired output?

share|improve this question
up vote 1 down vote accepted

I don't know about the ahocorasick module, but those results seem suspect. The acora module shows this:

import acora
import collections

ss = "this is the first sentence in this book "
     "the first sentence is really the most interesting "
     "the first sentence is always first"

words = ["first sentence is", 
         "first sentence",
         "the first sentence",
         "the first sentence is"]

tree = acora.AcoraBuilder(*words).build()

for match in tree.findall(ss):
    result[match] += 1


>>> result
defaultdict(<type 'int'>, 
            {'the first sentence'   : 3,
             'first sentence'       : 3,
             'first sentence is'    : 2,
             'the first sentence is': 2})
share|improve this answer
+1 Thank you. This agrees with my desired output. Do you have any experience with using this for large text by any chance? I mean, performance wise. – Legend Nov 11 '11 at 22:42
No direct experience with a large corpus, sorry. The PyPi page says it frees the GIL, and includes a 'fast' CPython' implementation, but beyond that I don't know. – Lemur Nov 11 '11 at 22:46
Oh, you might also try esmre, culled from here. – Lemur Nov 11 '11 at 22:48
Thank you. I can test them now :) Appreciate your help. – Legend Nov 11 '11 at 22:51

The way I understand the Aho-Corasick algorithm and the way I've implemented it would have me agree with your expected output. It looks like the Python library you're using is in error, or perhaps there's a flag that you can tell it to give you all matches starting at a position rather than just the longest match starting at a particular position.

The examples in the original paper,, support your understanding.

share|improve this answer
+1 Thank you for the informative answer. I was afraid this might be the case. That library seems to be pretty heavily used so I was just wondering why no one caught it before. – Legend Nov 11 '11 at 22:51

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