학술논문

Estimating truncation effects of quantum bosonic systems using sampling algorithms
Document Type
Working Paper
Source
Mach. Learn.: Sci. Technol. 4 045021, 2023
Subject
Quantum Physics
Computer Science - Artificial Intelligence
Computer Science - Machine Learning
High Energy Physics - Lattice
High Energy Physics - Theory
Language
Abstract
To simulate bosons on a qubit- or qudit-based quantum computer, one has to regularize the theory by truncating infinite-dimensional local Hilbert spaces to finite dimensions. In the search for practical quantum applications, it is important to know how big the truncation errors can be. In general, it is not easy to estimate errors unless we have a good quantum computer. In this paper, we show that traditional sampling methods on classical devices, specifically Markov Chain Monte Carlo, can address this issue for a rather generic class of bosonic systems with a reasonable amount of computational resources available today. As a demonstration, we apply this idea to the scalar field theory on a two-dimensional lattice, with a size that goes beyond what is achievable using exact diagonalization methods. This method can be used to estimate the resources needed for realistic quantum simulations of bosonic theories, and also, to check the validity of the results of the corresponding quantum simulations.
Comment: 22 pages, 4 figures