Sorting Networks: to the End and Back Again
July 06, 2015 Β· Declared Dead Β· π Journal of computer and system sciences (Print)
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Authors
Michael Codish, LuΓs Cruz-Filipe, Thorsten Ehlers, Mike MΓΌller, Peter Schneider-Kamp
arXiv ID
1507.01428
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM
Citations
30
Venue
Journal of computer and system sciences (Print)
Last Checked
3 months ago
Abstract
This paper studies new properties of the front and back ends of a sorting network, and illustrates the utility of these in the search for new bounds on optimal sorting networks. Search focuses first on the "outsides" of the network and then on the inner part. All previous works focus only on properties of the front end of networks and on how to apply these to break symmetries in the search. The new, out-side-in, properties help shed understanding on how sorting networks sort, and facilitate the computation of new bounds on optimal sorting networks. We present new parallel sorting networks for 17 to 20 inputs. For 17, 19, and 20 inputs these networks are faster than the previously known best networks. For 17 inputs, the new sorting network is shown optimal in the sense that no sorting network using less layers exists.
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