Estimating the Degree of Non-Markovianity Using Machine Learning

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Date

2021

Journal Title

Journal ISSN

Volume Title

Publisher

Amer Physical Soc

Open Access Color

Green Open Access

Yes

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No
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Top 10%
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Average
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Top 10%

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Abstract

In the last few years, the application of machine learning methods has become increasingly relevant in different fields of physics. One of the most significant subjects in the theory of open quantum systems is the study of the characterization of non-Markovian memory effects that emerge dynamically throughout the time evolution of open systems as they interact with their surrounding environment. Here we consider two well-established quantifiers of the degree of memory effects, namely, the trace distance and the entanglement-based measures of non-Markovianity. We demonstrate that using machine learning techniques, in particular, support vector machine algorithms, it is possible to estimate the degree of non-Markovianity in two paradigmatic open system models with high precision. Our approach can be experimentally feasible to estimate the degree of non-Markovianity, since it requires a single or at most two rounds of state tomography.

Description

Keywords

Quantum Dynamics, Memory, Information, Tutorial, System, Quantum Physics, FOS: Physical sciences, 006, Quantum Physics (quant-ph)

Fields of Science

0103 physical sciences, 01 natural sciences

Citation

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
20

Source

Physıcal Revıew A

Volume

103

Issue

2

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End Page

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Citations

Scopus : 23

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Mendeley Readers : 25

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3.8071

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