Typicality in Ensembles of Quantum States: Monte Carlo Sampling versus Analytical Approximations
Barbara Fresch, Giorgio J. Moro

TL;DR
This paper compares Monte Carlo sampling and analytical approximations for understanding the typical properties of random quantum states in different ensembles, revealing insights into their distributions and entropy behavior.
Contribution
It introduces a comparison between geometrical and approximate distributions of quantum states' populations, demonstrating the usefulness of analytical methods in ensemble analysis.
Findings
Analytical approximations effectively estimate ensemble-averaged quantities.
Distributions of populations differ significantly between geometrical and approximate models.
Typical values of Shannon entropy emerge in the studied ensembles.
Abstract
Random Quantum States are presently of interest in the fields of quantum information theory and quantum chaos. Moreover, a detailed study of their properties can shed light on some foundational issues of the quantum statistical mechanics such as the emergence of well defined thermal properties from the pure quantum mechanical description of large many body systems. When dealing with an ensemble of pure quantum states, two questions naturally arise: what is the probability density function on the parameters which specify the state of the system in a given ensemble? And, does there exist a most typical value of a function of interest in the considered ensemble? Here two different ensembles are considered: the Random Pure State Ensemble (RPSE) and the Fixed Expectation Energy Ensemble (FEEE). By means of a suitable parameterization of the wave function in terms of populations and phases,…
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