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I'd like to weight all of my PearsonItemSimilarity values between two items by the number of coratings they share divided by 50.

Or in other words update the generic pearson similarity between two items (items a and b for instance) accordingly -- similarity_new_ab = similarity_ab*numCoRatings_ab/50

  1. How does one get the number of coratings between two games using the existing mahout framework.

  2. Can someone please link me to (or illustrate) an example implementation of a rescorer?

My reasoning for doing this is as follows,

I postulate that most of the Pearson-similarities calculated are based on a small number (1 or 2 in most cases) of coratings. This would lead to the games sharing a Pearson correlation of 1 with each other, which in fact would probably not be the case should more coratings exist.

To account for this, I'd like up change these "naive" Pearson similarities to a similarity that is also based on the number of co-ratings.

I thought this is what the rescorer was built for, but I guess I was wrong.

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the mahout user list is a better target for this question. I don't know if anyone is answering substantive questions here. –  bmargulies Aug 20 '11 at 0:14
    
I do, Benson! Here or user@apache.org is fine. –  Sean Owen Aug 20 '11 at 6:17

1 Answer 1

up vote 0 down vote accepted

You want the method getNumUsersWithPreferenceFor() on DataModel and pass it the two item IDs. I don't think this is the best thing to do for this similarity metric. If you are using co-occurrence, look at LogLikelihoodSimilarity instead.

This has nothing to do with Rescorer though, what is your question there?

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Thanks Sean, DataModel's getNumUsersWithPreferenceFor() will be quite useful. I postulate that most of the Pearson-similarities calculated are based on a small number (1 or 2 in most cases) of coratings. This would lead to the games sharing a Pearson correlation of 1 with each other, which in fact would probably not be the case should more coratings exist. To account for this, I'd like up change these "naive" Pearson similarities to a similarity that is also based on the number of co-ratings. I thought this is what the rescorer was built for, but I guess I was wrong. –  nicolai.tesela Aug 22 '11 at 17:11
1  
For that -- maybe better to just copy the implementation and change its behavior in this way. Return NaN in these cases. That's more direct. Also, look at the "Weighting" argument which takes this into account in another way. –  Sean Owen Aug 22 '11 at 17:35

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