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Output-Sensitive Algorithms for Computing Nearest-Neighbour Decision Boundaries (2004)

Abstract
Given a set R of red points and a set B of blue points, the nearest-neighbour decision rule classifies a new point q as red (respectively, blue) if the closest point to q in R B comes from R (respectively, B). This rule implicitly partitions space into a red set and a blue set that are separated by a red-blue decision boundary. In this paper we develop output-sensitive algorithms for computing this decision boundary for point sets on the line and in R 2 . Both algorithms run in time O(n log k), where k is the number of points that contribute to the decision boundary. This running time is the best possible when parameterizing with respect to n and k.

Publication details
Download http://citeseer.ist.psu.edu/695764.html
Source http://cgm.cs.mcgill.ca/~godfried/publications/nn-boundary.pdf
Publisher unknown
Contributors The Pennsylvania State University CiteSeer Archives
Repository CiteSeer (United States)
Keywords David Bremner,Erik Demaine,Jeff Erickson,John Iacono,Stefan Langerman,Pat Morin,Godfried Toussaint Output-Sensitive Algorithms for Computing Nearest-Neighbour Decision Boundaries
Language Englisch
Relation oai:CiteSeerPSU:256494, oai:CiteSeerPSU:527188, oai:CiteSeerPSU:344438