论文标题
通过连续门集提高深量子优化算法的性能
Improving the Performance of Deep Quantum Optimization Algorithms with Continuous Gate Sets
论文作者
论文摘要
据信变量量子算法是解决计算困难问题的有望,通常由量子门的重复层组成。其中一个示例是量子近似优化算法(QAOA),这是一种解决嘈杂的中间尺度量子(NISQ)系统的组合优化问题的方法。从QAOA中获得计算能力在算法执行过程中的缓解措施依赖于缓解错误,对于相干限制的操作,可以通过减少门数来实现。在这里,通过使用超导量子电路实现连续的硬件有效的门集,我们证明了通过成功概率衡量的算法性能的提高3倍。此门集使我们能够用单个物理门对每对QUBITS执行QAOA中的相位分离步骤,而不是将其分解为两个C $ z $ - 盖特和单粒门。随着算法中使用的层数减少的物理门数量,我们通过实验研究了QAOA的电路深度依赖性性能应用于映射到三个和七个Qubits上的精确解决问题实例,最多可用于使用399个操作以及多达9层。我们的结果表明,连续门集的使用可能是扩展近期量子计算机影响的关键组成部分。
Variational quantum algorithms are believed to be promising for solving computationally hard problems and are often comprised of repeated layers of quantum gates. An example thereof is the quantum approximate optimization algorithm (QAOA), an approach to solve combinatorial optimization problems on noisy intermediate-scale quantum (NISQ) systems. Gaining computational power from QAOA critically relies on the mitigation of errors during the execution of the algorithm, which for coherence-limited operations is achievable by reducing the gate count. Here, we demonstrate an improvement of up to a factor of 3 in algorithmic performance as measured by the success probability, by implementing a continuous hardware-efficient gate set using superconducting quantum circuits. This gate set allows us to perform the phase separation step in QAOA with a single physical gate for each pair of qubits instead of decomposing it into two C$Z$-gates and single-qubit gates. With this reduced number of physical gates, which scales with the number of layers employed in the algorithm, we experimentally investigate the circuit-depth-dependent performance of QAOA applied to exact-cover problem instances mapped onto three and seven qubits, using up to a total of 399 operations and up to 9 layers. Our results demonstrate that the use of continuous gate sets may be a key component in extending the impact of near-term quantum computers.