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Open AccessJournal ArticleDOI

New applications of random sampling in computational geometry

Kenneth L. Clarkson
- 01 Jun 1987 - 
- Vol. 2, Iss: 1, pp 195-222
TLDR
This paper gives several new demonstrations of the usefulness of random sampling techniques in computational geometry by creating a search structure for arrangements of hyperplanes by sampling the hyperplanes and using information from the resulting arrangement to divide and conquer.
Abstract
This paper gives several new demonstrations of the usefulness of random sampling techniques in computational geometry. One new algorithm creates a search structure for arrangements of hyperplanes by sampling the hyperplanes and using information from the resulting arrangement to divide and conquer. This algorithm requiresO(sd+?) expected preprocessing time to build a search structure for an arrangement ofs hyperplanes ind dimensions. The expectation, as with all expected times reported here, is with respect to the random behavior of the algorithm, and holds for any input. Given the data structure, and a query pointp, the cell of the arrangement containingp can be found inO(logs) worst-case time. (The bound holds for any fixed ?>0, with the constant factors dependent ond and ?.) Using point-plane duality, the algorithm may be used for answering halfspace range queries. Another algorithm finds random samples of simplices to determine the separation distance of two polytopes. The algorithm uses expectedO(n[d/2]) time, wheren is the total number of vertices of the two polytopes. This matches previous results [10] for the cased = 3 and extends them. Another algorithm samples points in the plane to determine their orderk Voronoi diagram, and requires expectedO(s1+?k) time fors points. (It is assumed that no four of the points are cocircular.) This sharpens the boundO(sk2 logs) for Lee's algorithm [21], andO(s2 logs+k(s?k) log2s) for Chazelle and Edelsbrunner's algorithm [4]. Finally, random sampling is used to show that any set ofs points inE3 hasO(sk2 log8s/(log logs)6) distinctj-sets withj≤k. (ForS ?Ed, a setS? ?S with |S?| =j is aj-set ofS if there is a half-spaceh+ withS? =S ?h+.) This sharpens with respect tok the previous boundO(sk5) [5]. The proof of the bound given here is an instance of a "probabilistic method" [15].

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Book ChapterDOI

Robustness and Randomness

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Proceedings ArticleDOI

Experimental evidence for the power of random sampling in practical parallel algorithms

TL;DR: The authors justify the approach through experimental results obtained on a Connection Machine CM-2 for a specific problem, namely, segment intersection reporting, and explore the effect of varying the parameters of the method.
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Higher order Voronoi diagrams and distance functions in art and visualization

TL;DR: This chapter discusses several rendering techniques using color, line and texture to visualize higher order Voronoi diagrams in two and three dimensions.
Proceedings ArticleDOI

Chromatic k-Nearest Neighbor Queries

TL;DR: Efficient data structures that store P and can answer chromatic k -nearest neighbor ( k -NN) queries are developed and it is shown that by storing P in sorted order in an appropriate binary search tree, they can answer queries in O (log n ) time.
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Near-Optimal Algorithms for Point-Line Covering Problems.

TL;DR: Lower-bound results are derived showing that the running time of the randomized algorithm presented comes close to the lower bound on the time complexity of kernelization algorithms for Line Cover in the algebraic computation trees model.
References
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Book

The Art of Computer Programming

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TL;DR: This book offers a coherent treatment, at the graduate textbook level, of the field that has come to be known in the last decade or so as computational geometry.
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TL;DR: This chapter reproduces the English translation by B. Seckler of the paper by Vapnik and Chervonenkis in which they gave proofs for the innovative results they had obtained in a draft form in July 1966 and announced in 1968 in their note in Soviet Mathematics Doklady.
Book

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TL;DR: In this article, the authors present a coherent treatment of computational geometry in the plane, at the graduate textbook level, and point out the way to the solution of the more challenging problems in dimensions higher than two.