Quantum scrambling via accessible tripartite information
- URL: http://arxiv.org/abs/2305.19334v1
- Date: Tue, 30 May 2023 18:02:09 GMT
- Title: Quantum scrambling via accessible tripartite information
- Authors: Gabriele Lo Monaco, Luca Innocenti, Dario Cilluffo, Dario A Chisholm,
Salvatore Lorenzo and G Massimo Palma
- Abstract summary: Quantum information scrambling (QIS) is generally understood as local non-retrievability of information.
We show that these issues can be overcome by using accessible mutual informations.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum information scrambling (QIS), from the perspective of quantum
information theory, is generally understood as local non-retrievability of
information evolved through some dynamical process, and is often quantified via
entropic quantities such as the tripartite information. We argue that this
approach comes with a number of issues, in large part due to its reliance on
quantum mutual informations, which do not faithfully quantify correlations
directly retrievable via measurements, and in part due to the specific
methodology used to compute tripartite informations of the studied dynamics. We
show that these issues can be overcome by using accessible mutual informations,
defining corresponding ``accessible tripartite informations'', and provide
explicit examples of dynamics whose scrambling properties are not properly
quantified by the standard tripartite information. Our results lay the
groundwork for a more profound understanding of what QIS represents, and reveal
a number of promising, as of yet unexplored, venues for futher research.
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