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I have thousands of sentences in a file. I want to find only right/useful English Language words. Is it possible with Natural Language Processing?

Sample Sentence:

~@^.^@~ tic but sometimes world good famous tac Zorooooooooooo

I just want to extract only English Words like

tic world good famous

Any Advice how can I achieve this. Thanks in Advance

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But you don't want to extract sometimes ? – Russell Dias Sep 25 '10 at 6:17

3 Answers 3

up vote 3 down vote accepted

You can use the WordNet API for looking up words.

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Its good but I have text in different languages – Novice Sep 25 '10 at 6:13
@Shahid: Your question says you're only interested in English... – Cerin Sep 25 '10 at 13:19
@Shahid Additionally, using WordNet (English), the valid words from that example are: {tic, but, sometimes, world, good, famous}. If there are certain words you want to avoid (i.e. non-"useful" for you), you need a stop-word list as @regexhacks described. If you want other languages, there are a handful of non-English WordNet-like libs available: – msbmsb Sep 27 '10 at 15:48

You need to compile a list of stop words (once you don't want to enlist in your search) afterwards you can filter your search, using that stop words list. for details you should consider looking at these wikipedia article

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You can use a language guesser that uses character n-gram statistics. Usually only a small amount of material is needed (both for training and classification). Links to literature and implementations can be found here:

The methodology is very simple:

  1. Collect a small amount of text for each language.
  2. Extract and count the 1-grams and 5-grams occurring in the text.
  3. Order these n-grams by frequency, taking the best, say 300. This forms the fingerprint of the language.

If you want to classify a text or a sentence, you apply steps 2 and 3, and compare the resulting fingerprint to the fingerprints collected during training. Calculate a score based on rank differences of n-grams, the language with the lowest score wins.

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