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Robust algorithms with polynomial loss for near-unanimity CSPs

Dalmau, V.; Kozik, M.; Krokhin, A.; Makarychev, K.; Makarychev, Y.; Oprsal, J.

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Authors

V. Dalmau

M. Kozik

K. Makarychev

Y. Makarychev

J. Oprsal



Contributors

Philip N. Klein
Editor

Abstract

An instance of the Constraint Satisfaction Problem (CSP) is given by a family of constraints on overlapping sets of variables, and the goal is to assign values from a fixed domain to the variables so that all constraints are satisfied. In the optimization version, the goal is to maximize the number of satisfied constraints. An approximation algorithm for CSP is called robust if it outputs an assignment satisfying a (1 − g(ε))-fraction of constraints on any (1 − ε)- satisfiable instance, where the loss function g is such that g(ε) → 0 as ε → 0. We study how the robust approximability of CSPs depends on the set of constraint relations allowed in instances, the so-called constraint language. All constraint languages admitting a robust polynomialtime algorithm (with some g) have been characterised by Barto and Kozik, with the general bound on the loss g being doubly exponential, specifically g(ε) = O((log log(1/ε))/ log(1/ε)). It is natural to ask when a better loss can be achieved: in particular, polynomial loss g(ε) = O(ε1/k) for some constant k. In this paper, we consider CSPs with a constraint language having a near-unanimity polymorphism. We give two randomized robust algorithms with polynomial loss for such CSPs: one works for Marcin Kozik and Jakub Oprˇsal were partially supported by the National Science Centre Poland under grant no. UMO- 2014/13/B/ST6/01812; Jakub Oprˇsal has also received fund- ing from the European Research Council (Grant Agreement no. 681988, CSP-Infinity). Yury Makarychev was partially supported by NSF awards CAREER CCF-1150062 and IIS- 1302662. any near-unanimity polymorphism and the parameter k in the loss depends on the size of the domain and the arity of the relations in ????, while the other works for a special ternary near-unanimity operation called dual discriminator with k = 2 for any domain size. In the latter case, the CSP is a common generalisation of Unique Games with a fixed domain and 2-Sat. In the former case, we use the algebraic approach to the CSP. Both cases use the standard semidefinite programming relaxation for CSP.

Citation

Dalmau, V., Kozik, M., Krokhin, A., Makarychev, K., Makarychev, Y., & Oprsal, J. (2017). Robust algorithms with polynomial loss for near-unanimity CSPs. In P. N. Klein (Ed.), Proceedings of the twenty-eighth Annual ACM-SIAM symposium on discrete algorithms (340-357). https://doi.org/10.1137/1.9781611974782.22

Conference Name Symposium on Discrete Algorithms
Conference Location Barcelona
Start Date Jan 16, 2017
End Date Jan 19, 2017
Acceptance Date Oct 10, 2016
Online Publication Date Jan 4, 2017
Publication Date Jan 1, 2017
Deposit Date Dec 14, 2016
Publicly Available Date Dec 16, 2016
Publisher Society for Industrial and Applied Mathematics
Pages 340-357
Series Number 10.1137/1.9781611974782.22
Book Title Proceedings of the twenty-eighth Annual ACM-SIAM symposium on discrete algorithms.
DOI https://doi.org/10.1137/1.9781611974782.22
Public URL https://durham-repository.worktribe.com/output/1148205
Publisher URL https://www.siam.org/meetings/da17/
Related Public URLs https://arxiv.org/abs/1607.04787

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