Sign Problem in Tensor-Network Contraction
Abstract
We investigate how the computational difficulty of contracting tensor networks depends on the sign structure of the tensor entries. Using results from computational complexity, we observe that the approximate contraction of tensor networks with only positive entries has lower computational complexity as compared to tensor networks with general real or complex entries. This raises the question of how this transition in computational complexity manifests itself in the hardness of different tensor-network-contraction schemes. We pursue this question by studying random tensor networks with varying bias toward positive entries. First, we consider contraction via Monte Carlo sampling and find that the transition from hard to easy occurs when the tensor entries become predominantly positive; this can be understood as a tensor-network manifestation of the well-known negative-sign problem in quantum Monte Carlo. Second, we analyze the commonly used contraction based on boundary tensor networks. The performance of this scheme is governed by the number of correlations in contiguous parts of the tensor network (which by analogy can be thought of as entanglement). Remarkably, we find that the transition from hard to easy—i.e., from a volume-law to a boundary-law scaling of entanglement—already occurs for a slight bias of the tensor entries toward a positive mean, scaling inversely with the bond dimension D, and thus the problem becomes easy the earlier the larger D occurs. This is in contrast both to expectations and to the behavior found in Monte Carlo contraction, where the hardness at fixed bias increases with the bond dimension. To provide insight into this early breakdown of computational hardness and the accompanying entanglement transition, we construct an effective classical statistical-mechanical model that predicts a transition at a bias of the tensor entries of 1/D, confirming our observations. We conclude by investigating the computational difficulty of computing expectation values of tensor-network wave functions (projected entangled-pair states, PEPSs) and find that in this setting, the complexity of entanglement-based contraction always remains low. We explain this by providing a local transformation that maps PEPS expectation values to a positive-valued tensor network. This not only provides insight into the origin of the observed boundary-law entanglement scaling but also suggests new approaches toward PEPS contraction based on positive decompositions.
Copyright and License
Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article’s title, journal citation, and DOI.
Acknowledgement
We acknowledge helpful conversations with Garnet Chan, Ryan Levy, Daniel Malz, David Perez-Garcia, Bram Vanhecke, and Frank Verstraete. We would also like to thank Paul Brehmer and Anna Francuz for providing us with the PEPS tensor for the 𝐽1- 𝐽2 model. This research was funded in part by the Austrian Science Fund (FWF) (Grant DOIs 10.55776/COE1, 10.55776/P36305, and 10.55776/F71), the European Union (EU)—NextGenerationEU, and the EU Horizon 2020 research and innovation program through the European Research Council (ERC) Consolidator Grant (CoG) “Symmetries and Entanglement in Quantum Matter” (SEQUAM) (Grant No. 863476). J.J. is supported by the Multidisciplinary Research Program of the University Research Initiative (MURI) through Grant No. FA9550-18-1-0161 and the Institute for Quantum Information and Matter (IQIM), a U.S. National Science Foundation (NSF) Physics Frontiers Center (NSF Grant No. PHY-1125565). D.H. acknowledges financial support from the U.S. Department of Defense (DoD) through a Joint Center for Quantum Information and Computer Science (QuICS) Hartree fellowship. J.C. is supported by the NSF under Grant No. CHE-2102505. Part of this work was conducted while the authors were visiting the Simons Institute for the Theory of Computing (supported by Department of Energy (DOE) Quantum Systems Accelerator (QSA) Grant No. #FP00010905) during summer 2023 and spring 2024, whose hospitality we gratefully acknowledge. The computational results have in part been achieved using the Vienna Scientific Cluster (VSC).
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Additional details
- FWF Austrian Science Fund
- 10.55776/COE1
- FWF Austrian Science Fund
- 10.55776/P36305
- FWF Austrian Science Fund
- 10.55776/F71
- European Commission
- European Research Council
- 863476
- United States Air Force Office of Scientific Research
- FA9550-18-1-0161
- National Science Foundation
- PHY-1125565
- United States Department of Defense
- Joint Center for Quantum Information and Computer Science (QuICS) Hartree Fellowship
- National Science Foundation
- CHE-2102505
- United States Department of Energy
- FP00010905
- Accepted
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2024-12-19Accepted
- Caltech groups
- Institute for Quantum Information and Matter
- Publication Status
- Published