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arxiv: 1702.03676 · v3 · pith:W5UDAZEEnew · submitted 2017-02-13 · 💻 cs.CG · math.CO· math.PR

Epsilon-approximations and epsilon-nets

classification 💻 cs.CG math.COmath.PR
keywords epsilongeometricpropertiesrandomalgorithmicapproximateapproximationsbeen
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The use of random samples to approximate properties of geometric configurations has been an influential idea for both combinatorial and algorithmic purposes. This chapter considers two related notions---$\epsilon$-approximations and $\epsilon$-nets---that capture the most important quantitative properties that one would expect from a random sample with respect to an underlying geometric configuration.

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