Random projection trees and low dimension manifolds

Sanjoy Dasgupta and Yoav Freund
CS2007-0890
May 1, 2007

We present a simple variant of the k-d tree which automatically adapts to intrinsic low dimensional structure in data without having to explicitly learn this structure.


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