Inhibition of spread of typical bipartite and genuine multiparty
entanglement in response to disorder
- URL: http://arxiv.org/abs/2105.03384v2
- Date: Wed, 28 Dec 2022 08:49:00 GMT
- Title: Inhibition of spread of typical bipartite and genuine multiparty
entanglement in response to disorder
- Authors: George Biswas, Anindya Biswas, Ujjwal Sen
- Abstract summary: We find that the typical entanglement, averaged over the disorder, is taken farther away from uniformity, as quantified by decreased standard deviation, in comparison to the clean case.
The non-Gaussian distributions considered are uniform and Cauchy-Lorentz.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The distribution of entanglement of typical multiparty quantum states is not
uniform over the range of the measure utilized for quantifying the
entanglement. We intend to find the response to disorder in the state
parameters on this non-uniformity for typical states. We find that the typical
entanglement, averaged over the disorder, is taken farther away from
uniformity, as quantified by decreased standard deviation, in comparison to the
clean case. The feature is seemingly generic, as we see it for Gaussian and
non-Gaussian disorder distributions, for varying strengths of the disorder, and
for disorder insertions in one and several state parameters. The non-Gaussian
distributions considered are uniform and Cauchy-Lorentz. Two- and three-qubit
pure state Haar-uniform generations are considered for the typical state
productions. We also consider noisy versions of the initial states produced in
the Haar-uniform generations. A genuine multiparty entanglement monotone is
considered for the three-qubit case, while concurrence is used to measure
two-qubit entanglement.
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