A Block Belief-Propagation Algorithm for the Contraction of Tensor-Networks
Nir Gutman

TL;DR
This paper introduces the BlockBP algorithm, a novel tensor-network contraction method that coarse-grains systems into blocks to improve the simulation of complex quantum many-body systems, especially frustrated 2D models.
Contribution
The paper develops and implements the BlockBP algorithm for infinite lattices, enhancing tensor-network contraction efficiency for challenging quantum systems.
Findings
Successfully applied to the anti-ferromagnetic Heisenberg model on Kagome lattice.
Provides a scalable approximation method for highly correlated quantum states.
Improves upon existing belief propagation techniques for tensor networks.
Abstract
Simulating many-body quantum systems on a classical computer is difficult due to the large number of degrees of freedom, causing the computational complexity to grow exponentially with system size. Tensor Networks (TN) is a framework that breaks down large tensors into a network of smaller tensors, enabling efficient simulation of certain many-body quantum systems. To calculate expectation values of local observables or simulate nearest-neighbor interactions, a contraction of the entire network is needed. This is a known hard problem, which cannot be done exactly for systems with spatial dimension D>1 and is the major bottleneck in all tensor-network based algorithms. Various approximate-contraction algorithms have been suggested, all with their strengths and weaknesses. Nevertheless, contracting a 2D TN remains a major numerical challenge, limiting the use of TN techniques for many…
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Taxonomy
TopicsQuantum many-body systems · Tensor decomposition and applications · Markov Chains and Monte Carlo Methods
