Approximating dynamical correlation functions with constant depth quantum circuits
Reinis Irmejs, Raul A. Santos

TL;DR
This paper introduces a method to approximate dynamical correlation functions of quantum systems using constant-depth quantum circuits without requiring time evolution, achieving exponential accuracy in the complex frequency domain.
Contribution
It develops algorithms to approximate dynamical correlation functions via continued fraction representation, avoiding time dynamics and enabling exponential accuracy with constant-depth circuits.
Findings
Approximate correlation functions with exponential accuracy in the complex frequency domain.
Algorithms generate accurate approximations from eigenstates using constant-depth circuits.
Numerical simulations support theoretical exponential accuracy and stability considerations.
Abstract
One of the most important quantities characterizing the microscopic properties of quantum systems are dynamical correlation functions. These correlations are obtained by time-evolving a perturbation of an eigenstate of the system, typically the ground state. In this work, we study approximations of these correlation functions that do not require time dynamics. We show that having access to a circuit that prepares an eigenstate of the Hamiltonian, it is possible to approximate the dynamical correlation functions up to exponential accuracy in the complex frequency domain , on a strip above the real line . We achieve this by exploiting the continued fraction representation of the dynamical correlation functions as functions of frequency , where the level approximant can be obtained by measuring a weight operator on the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Neural Networks and Applications
