Hierarchy of Entanglement Renormalization and Long-Range Entangled States
Meng-Yuan Li, Peng Ye

TL;DR
This paper introduces a unified entanglement renormalization group framework for long-range entangled states, revealing a hierarchy that connects various topologically ordered quantum states through recursive addition/removal of degrees of freedom.
Contribution
It develops a hierarchical ERG approach that categorizes LRE states into 'state towers', unifying different topological orders and their relations within a single framework.
Findings
Established a hierarchy of ERG processes for LRE states.
Connected different topological quantum states through recursive addition/removal.
Proposed potential for generalized tensor-network representations.
Abstract
As a quantum-informative window into quantum many-body physics, the concept and application of entanglement renormalization group (ERG) have been playing a vital role in the study of novel quantum phases of matter, especially long-range entangled (LRE) states in topologically ordered systems. For instance, by recursively applying local unitaries as well as adding/removing qubits that form product states, the 2D toric code ground states, i.e., fixed point of Z_2 topological order, are efficiently coarse-grained with respect to the system size. As a further improvement, the addition/removal of 2D toric codes into/from the ground states of the 3D X-cube model, is shown to be indispensable and remarkably leads to well-defined fixed points of a large class of fracton orders that are non-liquid-like. Here, we present a substantially unified ERG framework in which general degrees of freedom…
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Taxonomy
TopicsQuantum many-body systems · Quantum Computing Algorithms and Architecture · Complex Systems and Time Series Analysis
