Defect Bootstrap: Tight Ground State Bounds in Spontaneous Symmetry Breaking Phases
Michael G. Scheer, Nisarg Chadha, Da-Chuan Lu, Eslam Khalaf

TL;DR
This paper introduces the defect bootstrap framework, which embeds systems into auxiliary models with ancilla degrees of freedom to tighten bounds in symmetry broken phases of quantum many-body systems.
Contribution
The paper develops a defect bootstrap method that improves bounds in symmetry broken phases by embedding systems into defect models with ancillas, addressing limitations of local constraints.
Findings
Achieved tighter bounds on energy densities and spin correlations in 1D and 2D transverse field Ising models.
Demonstrated the effectiveness of the defect bootstrap in deep symmetry broken phases.
Showed that physically motivated constraints can significantly enhance bootstrap methods.
Abstract
The recent development of bootstrap methods based on semidefinite relaxations of positivity constraints has enabled rigorous two-sided bounds on local observables directly in the thermodynamic limit. However, these bounds inevitably become loose in symmetry broken phases, where local constraints are insufficient to capture long-range order. In this work, we identify the origin of this looseness as order parameter defects which are difficult to remove using local operators. We introduce a framework that resolves this limitation by embedding the system into an auxiliary equipped with ancilla degrees of freedom. This construction effectively enables local operators to remove order parameter defects, yielding tighter bounds in phases with spontaneous symmetry breaking. This approach can be applied broadly to pairwise-interacting local…
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Taxonomy
TopicsQuantum many-body systems · Quantum Computing Algorithms and Architecture · Machine Learning in Materials Science
