Acceptable random variables in non-commutative probability spaces

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Abstract:

Acceptable random variables are defined in noncommutative (quantum) probability spaces and some of probability inequalities for these classes  are obtained. These results are a generalization of negatively orthant dependent random variables in probability theory. Furthermore, the obtained results can be used for random matrices.

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Journal title

volume 8  issue 2

pages  0- 0

publication date 2022-05

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