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I know that you can use the Jaccard index \ distance to measure the similarity / distance of two sets. However, I am looking for some way to scale the raw Jaccard values with respect to the lengths of the sets. For example, I want a higher similarity for two large sets with a significant overlap than for two small sets.

Of course, I could simply divide the value of the Jaccard distance by the size of the union of both sets, but is there a standard scheme of scaling for that purpose?

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perhaps use the intersection size only? –  Jan Dvorak Dec 13 '12 at 7:46
    
Well, if one set would have the same intersection with two other sets (a large and a small one), I would rather decide for the smaller of the two other sets. Therefore, considering only the intersection will not help. –  user1881788 Dec 13 '12 at 8:04
    
Note that the Jaccard index is size(intersection)/size(union). –  Jan Dvorak Dec 13 '12 at 8:10

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