# Weighted mean tending towards center

I'm experimenting on some movie rating data. Currently doing some hybrid item and user based predictions. Mathimatically I'm unsure how to implement what I want and maybe the answer is just straight forward weighed mean but I feel like there might be some other option.

I have 4 values for now, that I want to get the mean of

1. item based prediction
2. user based prediction
3. Global movie average for given item
4. Global user average for given user

As this progesses there will be other values I'll need to add to the mix such as weighted similarity, genre weighting and I'm sure a few other things.

For now I want to focus on the data available to me as stated above as much for understanding as anything else.

Here is my theory. To start I want to weight the item and user based prediction equally which will have more weight than the global averages.

I feel though on my very rusty maths and some basic attempts to come up with a less linear solution is to use something like Harmonic mean. but instead of natuarlly tending towards the low mean value tend towards the global average.

e.g

predicted item base rating 4.5

predicted user based rating 2.5

global movie rating 3.8

global user rating 3.6

so the "centre"/global average here would be 3.7

I may be way off base with this as my maths is quite rusty but anyone any thoughts on how I could mathematically represent what I'm thinking?

OR

do you have any thoughts on a different approach

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The netflix prize was won by a "stratified" SVD kind of algorithm. –  wildplasser Feb 23 '12 at 0:03
Indeed, at the moment that is a bit out of my reach. For learning purposes I'm trying this route and seeing how far I can get with it. I looked at SVD but not sure yet how I might implement it. –  Derek Organ Feb 23 '12 at 0:14