Tuning as convex optimisation: a polynomial tuner for multi-parametric combinatorial samplers

February 26, 2020 ยท The Ethereal ยท ๐Ÿ› Combinatorics, probability & computing

๐Ÿ”ฎ THE ETHEREAL: The Ethereal
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Authors Maciej Bendkowski, Olivier Bodini, Sergey Dovgal arXiv ID 2002.12771 Category math.CO: Combinatorics Cross-listed cs.CC, cs.DM, cs.DS, math.OC Citations 2 Venue Combinatorics, probability & computing Last Checked 3 months ago
Abstract
Combinatorial samplers are algorithmic schemes devised for the approximate- and exact-size generation of large random combinatorial structures, such as context-free words, various tree-like data structures, maps, tilings, RNA molecules. They can be adapted to combinatorial specifications with additional parameters, allowing for a more flexible control over the output profile of parametrised combinatorial patterns. One can control, for instance, the number of leaves, profile of node degrees in trees or the number of certain sub-patterns in generated strings. However, such a flexible control requires an additional and nontrivial tuning procedure. Using techniques of convex optimisation, we present an efficient tuning algorithm for multi-parametric combinatorial specifications. Our algorithm works in polynomial time in the system description length, the number of tuning parameters, the number of combinatorial classes in the specification, and the logarithm of the total target size. We demonstrate the effectiveness of our method on a series of practical examples, including rational, algebraic, and so-called Pรณlya specifications. We show how our method can be adapted to a broad range of less typical combinatorial constructions, including symmetric polynomials, labelled sets and cycles with cardinality lower bounds, simple increasing trees or substitutions. Finally, we discuss some practical aspects of our prototype tuner implementation and provide its benchmark results.
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