Maneewongvatana et al., 2001 - Google Patents
The analysis of a probabilistic approach to nearest neighbor searchingManeewongvatana et al., 2001
View PDF- Document ID
- 16994092246946195279
- Author
- Maneewongvatana S
- Mount D
- Publication year
- Publication venue
- Workshop on Algorithms and Data Structures
External Links
Snippet
Given a set S of n data points in some metric space. Given a query point q in this space, a nearest neighbor query asks for the nearest point of S to q. Throughout we will assume that the space is real d-dimensional space Rd, and the metric is Euclidean distance. The goal is …
- 238000004458 analytical method 0 title description 16
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