Quantum-Relaxation Based Optimization Algorithms: Theoretical Extensions
Abstract
Quantum Random Access Optimizer (QRAO) is a quantum-relaxation based optimization algorithm proposed by Fuller et al. that utilizes Quantum Random Access Code (QRAC) to encode multiple variables of binary optimization in a single qubit. The approximation ratio bound of QRAO for the maximum cut problem is 0.555 if the bit-to-qubit compression ratio is 3x, while it is 0.625 if the compression ratio is 2x, thus demonstrating a trade-off between space efficiency and approximability. In this research, we extend the quantum-relaxation by using another QRAC which encodes three classical bits into two qubits (the bit-to-qubit compression ratio is 1.5x) and obtain its approximation ratio for the maximum cut problem as 0.722. Also, we design a novel quantum relaxation that always guarantees a 2x bit-to-qubit compression ratio which is unlike the original quantum relaxation of Fuller~et~al. We analyze the condition when it has a non-trivial approximation ratio bound (>12). We hope that our results lead to the analysis of the quantum approximability and practical efficiency of the quantum-relaxation based approaches.