Title
Randomized partition trees for exact nearest neighbor search
Abstract
The k-d tree was one of the first spatial data structures proposed for nearest neighbor search. Its efficacy is diminished in high-dimensional spaces, but several variants, with randomization and overlapping cells, have proved to be successful in practice. We analyze three such schemes. We show that the probability that they fail to find the nearest neighbor, for any data set and any query point, is directly related to a simple potential function that captures the difficulty of the point configuration. We then bound this potential function in two situations of interest: the first, when data come from a doubling measure, and the second, when the data are documents from a topic model.
Year
Venue
DocType
2013
COLT
Journal
Volume
Citations 
PageRank 
abs/1302.1948
8
0.51
References 
Authors
9
2
Name
Order
Citations
PageRank
Sanjoy Dasgupta12052172.00
Kaushik Sinha224417.81