Fast Quantum Methods for Optimization
Sergio Boixo (1), Gerardo Ortiz (2), and Rolando Somma (3) ((1) Google, Quantum A.I. Labs, Venice, CA, (2) Department of Physics, Indiana University, (3), Theoretical Division, Los Alamos National Laboratory)

TL;DR
This paper introduces three quantum strategies for efficiently preparing low-temperature states in combinatorial optimization, demonstrating potential quantum advantages over classical methods through rigorous proofs and novel techniques.
Contribution
The paper presents three innovative quantum approaches to optimize discrete problems, including a classical-to-quantum mapping, spectral gap amplification, and diabatic processes, with proven quantum advantages.
Findings
Quantum advantage rigorously proven for certain strategies
Quadratic speedup over classical simulated annealing
Potential exponential speedup in the oracle model
Abstract
Discrete combinatorial optimization consists in finding the optimal configuration that minimizes a given discrete objective function. An interpretation of such a function as the energy of a classical system allows us to reduce the optimization problem into the preparation of a low-temperature thermal state of the system. Motivated by the quantum annealing method, we present three strategies to prepare the low-temperature state that exploit quantum mechanics in remarkable ways. We focus on implementations without uncontrolled errors induced by the environment. This allows us to rigorously prove a quantum advantage. The first strategy uses a classical-to-quantum mapping, where the equilibrium properties of a classical system in spatial dimensions can be determined from the ground state properties of a quantum system also in spatial dimensions. We show how such a ground state can…
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