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I want to discuss with you which similarity measure which meets my requirements. My vectors could be look like that:

A = (-4,0,4,null)
B = (-2,null,-4,null)
C = (4,4,4,4)
D = (0,0,0,0)
E = (null,null,null,null)
F = (-4,-4,-4,-4)

The values are activity values in a range from -5 to +5. The value of 0 stand for an non active value and values near -5 and +5 stand for an high active value. So i am searching for the right similarity measure.

I want to get the similarity between all combinations of the these vectors. I think the similarity between C and F must be 1 and the similarity between C and D must be 0:

C:E = 0
C:F = 1
C:D = 0
A:B = i think something over 0.5

I hope you unterstand my requirements. My question is now: which similarity measure could meet my requirements?

EDIT:

  • 0 is not the same as null. null is really not defined
  • The similarity measure needs only to calculate the similarity between two vectors
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closed as off topic by Ocaso Protal, John3136, Cyril Gandon, Stony, Jean Apr 19 '13 at 8:53

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what is the difference between null and zero. Is null like undefined? Also, building a distance metric is a complicated task, but if you want to make it work only for these 5 vectors (or a set of small vectors), then it should be feasible. –  Parag S. Chandakkar Apr 19 '13 at 8:20
    
My comment was slightly different. What I meant was, whenever one comes up with a distance metric, it is general and works for any pair of vectors (and has some significance). So do you want to make your distance function work only for 5 or 10 vectors or you have a general task in mind? –  Parag S. Chandakkar Apr 19 '13 at 8:23
    
My general task is to calculate the similarity betweeen more than 3 million vectors in the worst case –  bladepit Apr 19 '13 at 8:36
    
Since there are null values, the number of elements in each vectors will be different (if you replace null by empty element). In this case, I suggest you to have a look at Hausdorff distance –  Parag S. Chandakkar Apr 19 '13 at 8:37
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1 Answer 1

This is fairly complicated, first of all for C and F to be similar you want to start by taking the absolute value. Similarly, it looks like null should be translated into 0.

This will result in vectors with elements only in the range 0..5, which simplifies the problem a bit.

Then the question is how you want to do it, starting by taking the component wise difference is probably a good start, then the question is how to weight them together, a random guess would be either just linear combination or maybe something quadratic.

Really, it depends too much on your use-case to say anything useful on the last step, but I think that if you can start by getting all elements into the 0..5 range a lot is gained.

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0 is not the same as null...null is really not defined –  bladepit Apr 19 '13 at 8:20
    
So then, what is D:E? 0? –  leijon Apr 19 '13 at 8:58
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