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From Google Analytics I have a (long) list of keywords that people used in search engines to find my website. I want to find the 'core keywords', hypothetical example:

java online training
learning java
scala training
training for java
online training java
learn scala programming

The ideal result would be: 'java', 'online training', 'training', 'scala' and 'learn'.

The difficulty seems to be detecting complete phrases, ignoring common words (for) and handling variations (learn-learning).

Is there a library that can do that (preferably for JVM)? Or is there a suitable algorithm I can implement myself?

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I think you need to spend more time specifying your requirements. Even in your limited example I don't know why you don't consider "programming" to be "core". – Mark Peters Jan 6 '11 at 16:23
    
What if you would use googles number of results for finding good keywords? Scala would have less results than for -> better word. You could do a search for all possible phrases and record number of results for each phrase, then find a range where good phrases exists. (That was just a quick thought, so I'm not putting it as an answer) – Uros K Jan 6 '11 at 16:30
up vote 3 down vote accepted

This is a term or keyword extraction problem. I did a search and it turned up Kea, which looks to be very much what you want.

You can implement a naive solution by the following algorithm:

  • generate a list of ngrams in the document with the phrase length that you want (chose an arbitrary phrase length limit, like 3 or 4)
  • put the ngram into a Multiset
  • iterate over the entries of the multiset in the order of their degree or count, perhaps with an arbitrary cutoff

Like you said, this will have a problem with stopwords. You can do something simple like have a dictionary of stopwords, or you can do something like Term Frequency-Inverse Document Frequency which can help you automatically recognize very frequent terms. KEA will do this for you, it might be best to look into that first.

Hope that helps!

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