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Accelerating Grover Adaptive Search: Qubit and Gate Count Reduction Strategies With Higher Order Formulations

Y. Sano, Kosuke Mitarai, Naoki Yamamoto, Naoki Ishikawa

2024IEEE Transactions on Quantum Engineering14 citationsDOIOpen Access PDF

Abstract

Grover adaptive search (GAS) is a quantum exhaustive search algorithm designed to solve binary optimization problems. In this article, we propose higher order binary formulations that can simultaneously reduce the numbers of qubits and gates required for GAS. Specifically, we consider two novel strategies: one that reduces the number of gates through polynomial factorization, and the other that halves the order of the objective function, subsequently decreasing circuit runtime and implementation cost. Our analysis demonstrates that the proposed higher order formulations improve the convergence performance of GAS by reducing both the search space size and the number of quantum gates. Our strategies are also beneficial for general combinatorial optimization problems using one-hot encoding.

Topics & Concepts

Quadratic unconstrained binary optimizationQuantum computerQubitCombinatorial optimizationMathematical optimizationOptimization problemTravelling salesman problemQuadratic assignment problemComputer scienceSearch algorithmMathematicsQuantum annealingQuantumQuantum mechanicsPhysicsQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyComputability, Logic, AI Algorithms