Influence functional of many-body systems: temporal entanglement and matrix-product state representation
Michael Sonner, Alessio Lerose, Dmitry A. Abanin

TL;DR
This paper introduces a matrix-product state approach to the influence functional in many-body quantum systems, enabling efficient simulation of diverse dynamical behaviors including thermalization, localization, and time-crystalline responses.
Contribution
It applies the influence functional formalism to isolated many-body systems, approximating it with matrix-product states to analyze temporal entanglement and non-equilibrium dynamics.
Findings
Temporal entanglement entropy can be lower than spatial entanglement.
The method captures long-lived oscillations and impurity relaxation in infinite-temperature chains.
Logarithmic scaling of temporal entanglement in discrete time-crystalline phases.
Abstract
Feynman-Vernon influence functional (IF) was originally introduced to describe the effect of a quantum environment on the dynamics of an open quantum system. We apply the IF approach to describe quantum many-body dynamics in isolated spin systems, viewing the system as an environment for its local subsystems. While the IF can be computed exactly only in certain many-body models, it generally satisfies a self-consistency equation, provided the system, or an ensemble of systems, are translationally invariant. We view the IF as a fictitious wavefunction in the temporal domain, and approximate it using matrix-product states (MPS). This approach is efficient provided the temporal entanglement of the IF is sufficiently low. We illustrate the versatility of the IF approach by analyzing several models that exhibit a range of dynamical behaviors, from thermalizing to many-body localized. In…
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