Optimal Parallel Algorithms for Convex Hulls in 2D and 3D under Noisy Primitive Operations
June 20, 2025 Β· Declared Dead Β· π Canadian Conference on Computational Geometry
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Authors
Michael T. Goodrich, Vinesh Sridhar
arXiv ID
2506.17507
Category
cs.CG: Computational Geometry
Cross-listed
cs.DC
Citations
0
Venue
Canadian Conference on Computational Geometry
Last Checked
3 months ago
Abstract
In the noisy primitives model, each primitive comparison performed by an algorithm, e.g., testing whether one value is greater than another, returns the incorrect answer with random, independent probability p < 1/2 and otherwise returns a correct answer. This model was first applied in the context of sorting and searching, and recent work by Eppstein, Goodrich, and Sridhar extends this model to sequential algorithms involving geometric primitives such as orientation and sidedness tests. However, their approaches appear to be inherently sequential; hence, in this paper, we study parallel computational geometry algorithms for 2D and 3D convex hulls in the noisy primitives model. We give the first optimal parallel algorithms in the noisy primitives model for 2D and 3D convex hulls in the CREW PRAM model. The main technical contribution of our work concerns our ability to detect and fix errors during intermediate steps of our algorithm using a generalization of the failure sweeping technique.
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