Coarse graining flow of spin foam intertwiners
Bianca Dittrich, Erik Schnetter, Cameron J. Seth, Sebastian Steinhaus

TL;DR
This paper investigates how simplicity constraints in spin foam models evolve under coarse graining using tensor network methods, revealing distinct behaviors for BC and EPRL/FK models and highlighting the complexity of their large-scale dynamics.
Contribution
Introduces tensor network coarse graining for spin foam models implementing simplicity constraints, analyzing their flow and phase structure at larger scales.
Findings
BC model is a fixed point and topological phase
BC spin nets flow to various topological phases
EPRL/FK models show complex, non-convergent dynamics
Abstract
Simplicity constraints play a crucial role in the construction of spin foam models, yet their effective behaviour on larger scales is scarcely explored. In this article we introduce intertwiner and spin net models for the quantum group , which implement the simplicity constraints analogous to 4D Euclidean spin foam models, namely the Barrett-Crane (BC) and the Engle-Pereira-Rovelli-Livine/Freidel-Krasnov (EPRL/FK) model. These models are numerically coarse grained via tensor network renormalization, allowing us to trace the flow of simplicity constraints to larger scales. In order to perform these simulations we have substantially adapted tensor network algorithms, which we discuss in detail. The BC and the EPRL/FK model behave very differently under coarse graining: While the unique BC intertwiner model is a fixed point and therefore constitutes…
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