# Find 10 closest matches of a 30 dimensional vector, what data structure?

I got a vector with 30 dimensions and I want to find the 10 closest matches in my database. I have around 3000 vectors in my DB which I’ve to compare it to. Some dimensions are more important than others so I want to give them all separate weights.

The 30 dimensions are buildup out of 10 times RGB values. I split a picture in to 9 tiles. So 9 * 3 (RGB) 27. And the last three values are the RGB of the mean color of the picture.

My question is: Is this possible, if so. What is the best way to make this process as quick and efficient as possible? Myself, I was thinking about some sort of tree but there are so many trees I don’t know which one is most suitable for my problem.

Edit:

I guess I wasn’t totally clear on what I wanted to achieve. I have a random vector and I want to compare this one with the vectors in my DB to find the 10 closed. I have a DB with all my vectors. I have stored them in a MySQL DB every row is a vector. See below

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How you store 30-dimension vectors in your database? – SergeyS Dec 25 '12 at 12:49
Storing a custom tree in a (relational) database doesn't seem possible to do in a manner useful for performance. – Jan Dvorak Dec 25 '12 at 12:53
Only 3000 of them? Just brute force – nhahtdh Dec 25 '12 at 12:55
Hey, 30 dimensional vector?? If you have just length==2 for each dimension, you will get around 1000000000 (one billion) values in your array. Maybe you mean 30-length vector, not 30-dimensional? – SergeyS Dec 25 '12 at 13:06
@SergeyS: vector of length 30 is exactly a point in 30-dimensional vector space, nothing strange about that. – Krystian Dec 25 '12 at 13:24