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Suppose I give you a URL...can you analyze the words and spit out the "keywords" of that page? (besides using meta-tags)

Are there good open-source summarizers out there? (preferably Python)

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up vote 1 down vote accepted

Frequency counts will get you some of the way but Natural Language Processing will provide better results as it uses linguistic techniques to provide more accuracy.

Topia.termextract uses a Parts-Of-Speech (POS) tagging algorithm and is available from PyPi http://pypi.python.org/pypi/topia.termextract/

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A simple text summarizer: http://pythonwise.blogspot.com/2008/01/simple-text-summarizer.html


1. For each word, calculate it's frequency in the document
2. For each sentence in the document 
      score(sentence) = sum([freq(word) for word in sentence])
3. Print X top sentences such that their size < MAX_SUMMARY_SIZE
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The problem with this is that common words like 'it', 'and' etc. will get priority. A better idea would be to use the idea of relative requency, where you get the frequency of a word and divide it by a value which indicates how frequently it occurs in regular text. – Tola Odejayi Dec 4 '09 at 0:09

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