2010
DOI: 10.1016/j.comgeo.2010.04.006
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Approximate centerpoints with proofs

Abstract: We present the Iterated-Tverberg algorithm, the first deterministic algorithm for computing an approximate centerpoint of a set S ∈ R d with running time sub-exponential in d. The algorithm is a derandomization of the Iterated-Radon algorithm of Clarkson et al and is guaranteed to terminate with an O(1/d 2)-center. Moreover, it returns a polynomial-time checkable proof of the approximation guarantee, despite the coNP-Completenes of testing centerpoints in general. We also explore the use of higher order Tverbe… Show more

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Cited by 29 publications
(36 citation statements)
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References 15 publications
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“…To achieve fast algorithms, we have to pay the price of reducing the number of parts in our partition. There is a deterministic algorithm by Miller and Sheehy that gives a Tverberg partition with r = n (d+1) 2 in n O(log d) time [MS10]. Using a lifting argument in combination with Miller and Sheehy's algorithm, a deterministic algorithm that gives a Tverberg partition with r = n 4(d+1) 3 that runs in time d O(log d) n was produced by Mulzer and Werner [MW13].…”
Section: Finding Tverberg Partitionsmentioning
confidence: 99%
“…To achieve fast algorithms, we have to pay the price of reducing the number of parts in our partition. There is a deterministic algorithm by Miller and Sheehy that gives a Tverberg partition with r = n (d+1) 2 in n O(log d) time [MS10]. Using a lifting argument in combination with Miller and Sheehy's algorithm, a deterministic algorithm that gives a Tverberg partition with r = n 4(d+1) 3 that runs in time d O(log d) n was produced by Mulzer and Werner [MW13].…”
Section: Finding Tverberg Partitionsmentioning
confidence: 99%
“…For example, the Tukey median [Tuk75] is a sample-efficient robust mean estimator for various symmetric distributions [DG92,CGR15]. However, it is NP-hard to compute in general [JP78,AK95] and the many heuristics for computing it degrade in the quality of their approximation as the dimension scales [CEM + 93, Cha04,MS10].…”
Section: Related and Prior Workmentioning
confidence: 99%
“…The algorithm repeatedly combines k-colorful choices to one 0-embracing k/2 -colorful choice until a 0-embracing 1-colorful choice is obtained. This approach is similar to the Miller-Sheehy approximation algorithm for Tverberg partitions [20], and it leads to an algorithm with total running time d O(log d) . Proof.…”
Section: Many Colorsmentioning
confidence: 99%