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I need to take a paragraph of text and extract from it a list of "tags". Most of this is quite straight forward. However I need some help now stemming the resulting word list to avoid duplicates. Example: Community / Communities

I've used an implementation of Porter Stemmer algorithm (I'm writing in PHP by the way):

http://tartarus.org/~martin/PorterStemmer/php.txt

This works, up to a point, but doesn't return "real" words. The example above is stemmed to "commun".

I've tried "Snowball" (suggested within another Stack Overflow thread).

http://snowball.tartarus.org/demo.php

For my example (community / communities), Snowball stems to "communiti".

Question

Are there any other stemming algorithms that will do this? Has anyone else solved this problem?

My current thinking is that I could use a stemming algorithm to avoid duplicates and then pick the shortest word I encounter to be the actual word to display.

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The easiest way I think would be to just store both values, the full word and the stem. – VirtuosiMedia Mar 23 at 17:09

2 Answers

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The core issue here is that stemming algorithms operate on a phonetic basis with no actual understanding of the language they're working with. To produce real words, you'll probably have to merge the stemmer's output with some form of lookup function to convert the stems back to real words. I can basically see two potential ways to do this:

  1. Locate or create a large dictionary which maps each possible stem back to an actual word. (e.g., communiti -> community)
  2. Create a function which compares each stem to a list of the words that were reduced to that stem and attempts to determine which is most similar. (e.g., comparing "communiti" against "community" and "communities" in such a way that "community" will be recognized as the more similar option)

Personally, I think the way I would do it would be a dynamic form of #1, building up a custom dictionary database by recording every word examined along with what it stemmed to and then assuming that the most common word is the one that should be used. (e.g., If my body of source text uses "communities" more often than "community", then map communiti -> communities.) A dictionary-based approach will be more accurate in general and building it based on the stemmer input will provide results customized to your texts, with the primary drawback being the space required, which is generally not an issue these days.

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This seems like a good idea. I think having an automated system will be beneficial, so working on the "most common" word being the one to use seems a simple solution - and easy to implement. Many thanks. – Dave Oct 14 '08 at 9:05
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If I understand correctly, then what you need is not a stemmer but a lemmatizer. Lemmatizer is a tool with knowledge about endings like -ies, -ed, etc., and exceptional wordforms like written, etc. Lemmatizer maps the input wordform to its lemma, which is guaranteed to be a "real" word.

There are many lemmatizers for English, I've only used morpha though. Morpha is just a big lex-file which you can compile into an executable. Usage example:

$ cat test.txt 
Community
Communities
$ cat test.txt | ./morpha -uc
Community
Community

You can get morpha from http://www.informatics.sussex.ac.uk/research/groups/nlp/carroll/morph.html

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