Generalizing measurement-induced phase transitions to information exchange symmetry breaking
Shane P. Kelly, Jamir Marino

TL;DR
This paper introduces a framework for understanding measurement-induced phase transitions through the lens of information exchange symmetry breaking, unifying various experimental scenarios and revealing new universality classes.
Contribution
It generalizes the measurement-induced phase transition concept by defining a new symmetry breaking mechanism related to information exchange between system, apparatus, and environment.
Findings
Identifies a minimum symmetry subgroup whose breaking causes entanglement transition.
Shows the entanglement transition as spontaneous breaking of information exchange symmetry.
Demonstrates a distinct universality class in quantum-enhanced experiments with Haar-random unitaries.
Abstract
In this work we investigate the conditions for quantum back action to result in a phase transition in the information dynamics of a monitored system. We introduce a framework that captures a wide range of experiments encompassing probes comprised of projective measurements and probes which more generally transfer quantum information from the system to a quantum computer. Our framework explicitly uses a model of unitary evolution which couples system, apparatus and environment. Information dynamics is investigated using the R\'enyi and von-Neumann entropies of the evolving state, and we construct a replica theory for them. We identify the possible replica symmetries an experiment can possess and discuss their spontaneous symmetry breaking. In particular, we identify a minimum subgroup whose spontaneous symmetry breaking results in an entanglement transition. This symmetry is only…
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Taxonomy
TopicsNeural Networks and Applications · Statistical Mechanics and Entropy
