English

Combinatorial Optimization Algorithms via Polymorphisms

Computational Complexity 2015-01-08 v1

Abstract

An elegant characterization of the complexity of constraint satisfaction problems has emerged in the form of the the algebraic dichotomy conjecture of [BKJ00]. Roughly speaking, the characterization asserts that a CSP {\Lambda} is tractable if and only if there exist certain non-trivial operations known as polymorphisms to combine solutions to {\Lambda} to create new ones. In an entirely separate line of work, the unique games conjecture yields a characterization of approximability of Max-CSPs. Surprisingly, this characterization for Max-CSPs can also be reformulated in the language of polymorphisms. In this work, we study whether existence of non-trivial polymorphisms implies tractability beyond the realm of constraint satisfaction problems, namely in the value-oracle model. Specifically, given a function f in the value-oracle model along with an appropriate operation that never increases the value of f , we design algorithms to minimize f . In particular, we design a randomized algorithm to minimize a function f that admits a fractional polymorphism which is measure preserving and has a transitive symmetry. We also reinterpret known results on MaxCSPs and thereby reformulate the unique games conjecture as a characterization of approximability of max-CSPs in terms of their approximate polymorphisms.

Keywords

Cite

@article{arxiv.1501.01598,
  title  = {Combinatorial Optimization Algorithms via Polymorphisms},
  author = {Jonah Brown-Cohen and Prasad Raghavendra},
  journal= {arXiv preprint arXiv:1501.01598},
  year   = {2015}
}
R2 v1 2026-06-22T07:54:06.197Z