Sampling diverse near-optimal solutions via algorithmic quantum annealing.


Journal

Physical review. E
ISSN: 2470-0053
Titre abrégé: Phys Rev E
Pays: United States
ID NLM: 101676019

Informations de publication

Date de publication:
Dec 2023
Historique:
received: 01 12 2022
accepted: 10 11 2023
medline: 20 1 2024
pubmed: 20 1 2024
entrez: 20 1 2024
Statut: ppublish

Résumé

Sampling a diverse set of high-quality solutions for hard optimization problems is of great practical relevance in many scientific disciplines and applications, such as artificial intelligence and operations research. One of the main open problems is the lack of ergodicity, or mode collapse, for typical stochastic solvers based on Monte Carlo techniques leading to poor generalization or lack of robustness to uncertainties. Currently, there is no universal metric to quantify such performance deficiencies across various solvers. Here, we introduce a new diversity measure for quantifying the number of independent approximate solutions for NP-hard optimization problems. Among others, it allows benchmarking solver performance by a required time-to-diversity (TTD), a generalization of often used time-to-solution (TTS). We illustrate this metric by comparing the sampling power of various quantum annealing strategies. In particular, we show that the inhomogeneous quantum annealing schedules can redistribute and suppress the emergence of topological defects by controlling space-time separated critical fronts, leading to an advantage over standard quantum annealing schedules with respect to both TTS and TTD for finding rare solutions. Using path-integral Monte Carlo simulations for up to 1600 qubits, we demonstrate that nonequilibrium driving of quantum fluctuations, guided by efficient approximate tensor network contractions, can significantly reduce the fraction of hard instances for random frustrated 2D spin glasses with local fields. Specifically, we observe that by creating a class of algorithmic quantum phase transitions, the diversity of solutions can be enhanced by up to 40% with the fraction of hard-to-sample instances reducing by more than 25%.

Identifiants

pubmed: 38243510
doi: 10.1103/PhysRevE.108.065303
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

065303

Auteurs

Masoud Mohseni (M)

Google Quantum AI, Venice, California 90291, USA.
LSIP, Hewlett Packard Labs, Milpitas, California, USA.

Marek M Rams (MM)

Jagiellonian University, Institute of Theoretical Physics, Łojasiewicza 11, 30-348 Kraków, Poland.

Sergei V Isakov (SV)

Google Quantum AI, Zurich, Switzerland.

Daniel Eppens (D)

Google Quantum AI, Venice, California 90291, USA.

Susanne Pielawa (S)

Google, Munich, Germany.

Johan Strumpfer (J)

Google, Mountain View, California 94043, USA.

Sergio Boixo (S)

Google Quantum AI, Venice, California 90291, USA.

Hartmut Neven (H)

Google Quantum AI, Venice, California 90291, USA.

Classifications MeSH