4.4 Article

Tensor Network Contractions for #SAT

Journal

JOURNAL OF STATISTICAL PHYSICS
Volume 160, Issue 5, Pages 1389-1404

Publisher

SPRINGER
DOI: 10.1007/s10955-015-1276-z

Keywords

Statistical physics; Complexity; Computational physics; Quantum physics

Funding

  1. Fondazione Compagnia di San Paolo through the Q-ARACNE project
  2. Foundational Questions Institute (FQXi) [FQXi-RFP3-1322]
  3. NSF [NSF-1007808]
  4. Direct For Mathematical & Physical Scien
  5. Division Of Mathematical Sciences [1007808] Funding Source: National Science Foundation

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The computational cost of counting the number of solutions satisfying a Boolean formula, which is a problem instance of #SAT, has proven subtle to quantify. Even when finding individual satisfying solutions is computationally easy (e.g. 2-SAT, which is in ), determining the number of solutions can be #-hard. Recently, computational methods simulating quantum systems experienced advancements due to the development of tensor network algorithms and associated quantum physics-inspired techniques. By these methods, we give an algorithm using an axiomatic tensor contraction language for n-variable #SAT instances with complexity where c is the number of COPY-tensors, g is the number of gates, and d is the maximal degree of any COPY-tensor. Thus, n-variable counting problems can be solved efficiently when their tensor network expression has at most COPY-tensors and polynomial fan-out. This framework also admits an intuitive proof of a variant of the Tovey conjecture (the r,1-SAT instance of the Dubois-Tovey theorem). This study increases the theory, expressiveness and application of tensor based algorithmic tools and provides an alternative insight on these problems which have a long history in statistical physics and computer science.

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