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I have a lot of queries for one text. Example "North America", "Europe", "Asia" (queries) and one text (e.g. a large text about the USA (e.g. the Wikipedia article)).

Now I build an index of the large text and after that I send the above mentioned queries. Now Lucene (version 4) calculates a score. But as I know through different searches, this is no real percentage and no real similarity between the query and the text. With TFIDFSimilarity I only get very small scores (<0.05)

But I wish to get the following similarities: "North America" ==> 90% "Europe", "Asia" ==> 40%

.. or something else, but it should be a real similarity.

What can I do? Does somebody have any ideas?

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Lucene scoring is not intended to represent percentages, and can not be effectively normalized to them. See here and here. –  femtoRgon Mar 25 '13 at 17:55
    
possible duplicate of how do I normalise a solr/lucene score? –  femtoRgon Mar 25 '13 at 17:55
    
I already read about not using the score as %. Now I ' m using the term frequency in order to get such results. –  topfklao Mar 29 '13 at 20:25

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