Machine learning and optimization-based approaches to duality in statistical physics
The notion of duality -- that a given physical system can have two different mathematical descriptions -- is a key idea in modern theoretical physics. Establishing a duality in lattice statistical mechanics models requires the construction of a dual Hamiltonian and a map from the original to the dua...
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Zusammenfassung: | The notion of duality -- that a given physical system can have two different
mathematical descriptions -- is a key idea in modern theoretical physics.
Establishing a duality in lattice statistical mechanics models requires the
construction of a dual Hamiltonian and a map from the original to the dual
observables. By using simple neural networks to parameterize these maps and
introducing a loss function that penalises the difference between correlation
functions in original and dual models, we formulate the process of duality
discovery as an optimization problem. We numerically solve this problem and
show that our framework can rediscover the celebrated Kramers-Wannier duality
for the 2d Ising model, reconstructing the known mapping of temperatures. We
also discuss an alternative approach which uses known features of the mapping
of topological lines to reduce the problem to optimizing the couplings in a
dual Hamiltonian, and explore next-to-nearest neighbour deformations of the 2d
Ising duality. We discuss future directions and prospects for discovering new
dualities within this framework. |
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DOI: | 10.48550/arxiv.2411.04838 |