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Complexity Analysis of Random Geometric Structures Made Simpler

机译:简化随机几何结构的复杂度分析

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Average-case analysis of data-structures or algorithms is commonly used in computational geometry when the, more classical, worst-case analysis is deemed overly pessimistic. Since these analyses are often intricate, the models of random geometric data that can be handled are often simplistic and far from 'realistic inputs'. We present a new simple scheme for the analysis of geometric structures. While this scheme only produces results up to a polylog factor, it is much simpler to apply than the classical techniques and therefore succeeds in analyzing new input distributions related to smoothed complexity analysis. We illustrate our method on two classical structures: convex hulls and Delaunay triangulations. Specifically, we give short and elementary proofs of the classical results that n points uniformly distributed in a ball in R~d have a convex hull and a Delaunay triangulation of respective expected complexities direct-(n~((d-1)/(d+1))) and direct-(n). We then prove that if we start with n points well-spread on a sphere, e.g. an (e, k)-sample of that sphere, and perturb that sample by moving each point randomly and uniformly within distance at most δ of its initial position, then the expected complexity of the convex hull of the resulting point set is direct-((n~(1/2))~(1-(1/d))(1/(δ~(1/4)))~(d-1/d)).
机译:当更经典,最坏情况的分析被认为过于悲观时,通常在计算几何中使用数据结构或算法的平均情况分析。由于这些分析通常是复杂的,因此可以处理的随机几何数据的模型通常很简单,并且与“现实的输入”相去甚远。我们提出了一种用于分析几何结构的新的简单方案。尽管此方案仅产生高达多对数因子的结果,但它比传统技术更容易应用,因此成功地分析了与平滑复杂度分析有关的新输入分布。我们在两个经典结构上说明我们的方法:凸包和Delaunay三角剖分。具体来说,我们给出经典​​结果的简短证明和基本证明,即在R〜d中均匀分布在球中的n个点具有凸包和各自预期复杂度为直接的Delaunay三角剖分Direct-(n〜((d-1)/(d +1)))和直接-(n)。然后我们证明如果我们从球体上良好分布的n个点开始,例如该球的(e,k)样本,并通过在每个点的初始位置最多δ的距离内随机且均匀地移动每个点来扰动该样本,则所得点集的凸包的预期复杂度为直接-( (n〜(1/2))〜(1-(1 / d))(1 /(δ〜(1/4))〜(d-1 / d))。

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