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The number of solutions for random regular NAE-SAT

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 نشر من قبل Nike Sun
 تاريخ النشر 2016
  مجال البحث فيزياء
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Recent work has made substantial progress in understanding the transitions of random constraint satisfaction problems. In particular, for several of these models, the exact satisfiability threshold has been rigorously determined, confirming predictions of statistical physics. Here we revisit one of these models, random regular k-NAE-SAT: knowing the satisfiability threshold, it is natural to study, in the satisfiable regime, the number of solutions in a typical instance. We prove here that these solutions have a well-defined free energy (limiting exponential growth rate), with explicit value matching the one-step replica symmetry breaking prediction. The proof develops new techniques for analyzing a certain survey propagation model associated to this problem. We believe that these methods may be applicable in a wide class of related problems.

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