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AI
2003
Springer

Hybrid Randomised Neighbourhoods Improve Stochastic Local Search for DNA Code Design

13 years 9 months ago
Hybrid Randomised Neighbourhoods Improve Stochastic Local Search for DNA Code Design
Sets of DNA strands that satisfy combinatorial constraints play an important role in various approaches to biomolecular computation, nanostructure design, and molecular tagging. The problem of designing such sets of DNA strands, also known as the DNA code design problem, appears to be computationally hard. In this paper, we show how a recently proposed stochastic local search algorithm for DNA code design can be improved by using hybrid, randomised neighbourhoods. This new type of neighbourhood structure equally supports small changes to a given candidate set of strands as well as much larger modifications, which correspond to random, long range connections in the search space induced by the standard (1-mutation) neighbourhood. We report several cases in which our algorithm finds word sets that match or exceed the best previously known constructions.
Dan C. Tulpan, Holger H. Hoos
Added 06 Jul 2010
Updated 06 Jul 2010
Type Conference
Year 2003
Where AI
Authors Dan C. Tulpan, Holger H. Hoos
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