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Main Authors: Zonnios, Magdalini, Boyd, Alec, Binder, Felix C.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.12812
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author Zonnios, Magdalini
Boyd, Alec
Binder, Felix C.
author_facet Zonnios, Magdalini
Boyd, Alec
Binder, Felix C.
contents Stochastic processes abound in nature and accurately modeling them is essential across the quantitative sciences. They can be described by hidden Markov models (HMMs) or by their quantum extensions (QHMMs). These models explain and give rise to process outputs in terms of an observed system interacting with an unobserved memory. Although there are infinitely many models that can generate a given process, they can vary greatly in their memory requirements. It is therefore of great fundamental and practical importance to identify memory-minimal models. This task is complicated due to both the number of generating models, and the lack of invariant features that determine elements of the set. In general, it is forbiddingly difficult to ascertain that a given model is minimal. Addressing this challenge, we here identify spectral invariants of a process that can be calculated from any model that generates it. This allows us to determine strict bounds on the quantum generative complexity of the process -- its minimal memory requirement. We then show that the bound is raised quadratically when we restrict to classical operations. This is an entirely quantum-coherent effect, as we express precisely, using the resource theory of coherence. Finally, we demonstrate that the classical bound can be violated by quantum models.
format Preprint
id arxiv_https___arxiv_org_abs_2412_12812
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Memory-minimal quantum generation of stochastic processes: spectral invariants of quantum hidden Markov models
Zonnios, Magdalini
Boyd, Alec
Binder, Felix C.
Quantum Physics
Stochastic processes abound in nature and accurately modeling them is essential across the quantitative sciences. They can be described by hidden Markov models (HMMs) or by their quantum extensions (QHMMs). These models explain and give rise to process outputs in terms of an observed system interacting with an unobserved memory. Although there are infinitely many models that can generate a given process, they can vary greatly in their memory requirements. It is therefore of great fundamental and practical importance to identify memory-minimal models. This task is complicated due to both the number of generating models, and the lack of invariant features that determine elements of the set. In general, it is forbiddingly difficult to ascertain that a given model is minimal. Addressing this challenge, we here identify spectral invariants of a process that can be calculated from any model that generates it. This allows us to determine strict bounds on the quantum generative complexity of the process -- its minimal memory requirement. We then show that the bound is raised quadratically when we restrict to classical operations. This is an entirely quantum-coherent effect, as we express precisely, using the resource theory of coherence. Finally, we demonstrate that the classical bound can be violated by quantum models.
title Memory-minimal quantum generation of stochastic processes: spectral invariants of quantum hidden Markov models
topic Quantum Physics
url https://arxiv.org/abs/2412.12812