Learning out-of-time-ordered correlators with classical kernel methods
John Tanner, Jason Pye, Jingbo Wang

TL;DR
This paper demonstrates that classical kernel methods can accurately learn out-of-time-ordered correlators in quantum systems, providing an efficient alternative to costly quantum simulations for parameterized Hamiltonians.
Contribution
It introduces a novel approach using classical kernel methods to predict OTOCs in quantum many-body systems, reducing reliance on expensive tensor network simulations.
Findings
Kernel methods achieve high R^2 scores (>0.71) in predicting OTOCs.
Laplacian and RBF kernels outperform others in accuracy.
Models can replace tensor network calculations for specific Hamiltonian sets.
Abstract
Out-of-Time Ordered Correlators (OTOCs) are widely used to investigate information scrambling in quantum systems. However, directly computing OTOCs with classical computers is an expensive procedure. This is due to the need to classically simulate the dynamics of quantum many-body systems, which entails computational costs that scale rapidly with system size. Similarly, exact simulation of the dynamics with a quantum computer (QC) will either only be possible for short times with noisy intermediate-scale quantum (NISQ) devices, or will require a fault-tolerant QC which is currently beyond technological capabilities. This motivates a search for alternative approaches to determine OTOCs and related quantities. In this study, we explore four parameterised sets of Hamiltonians describing local one-dimensional quantum systems of interest in condensed matter physics. For each set, we…
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Taxonomy
TopicsNeural Networks and Applications · Advanced Data Compression Techniques · Image and Signal Denoising Methods
