Very little is known about the cost landscape for parametrized Quantum Circuits (PQCs). Nevertheless, PQCs are employed in Quantum Neural Networks and Variational Quantum Algorithms, which may allow for near-term quantum advantage. Such applications require good optimizers to train PQCs. Recent works have focused on quantum-aware optimizers specifically tailored for PQCs. However, ignorance of the cost landscape could hinder progress towards such optimizers. In this work, we analytically prove two results for PQCs: (1) We find an exponentially large symmetry in PQCs, yielding an exponentially large degeneracy of the minima in the cost landscape. Alternatively, this can be cast as an exponential reduction in the volume of relevant hyperparameter space. (2) We study the resilience of the symmetries under noise, and show that while it is conserved under unital noise, non-unital channels can break these symmetries and lift the degeneracy of minima, leading to multiple new local minima. Based on these results, we introduce an optimization method called Symmetry-based Minima Hopping (SYMH), which exploits the underlying symmetries in PQCs. Our numerical simulations show that SYMH improves the overall optimizer performance in the presence of non-unital noise at a level comparable to current hardware. Overall, this work derives large-scale circuit symmetries from local gate transformations, and uses them to construct a noise-aware optimization method.
翻译:有关半透明量子电路的成本前景(PQCs)鲜为人知。然而,对半优化量子电路的成本前景(PQCs)知之甚少。尽管如此,对成本前景的无知会阻碍这种优化的进展。在这项工作中,我们分析证明PQCs有两种结果:(1) 我们在QQCs门发现巨型的对称性,在成本景观中可以产生微量量量子优势。这些应用需要良好的优化性能来培训PQCs。最近的工作侧重于专门为PQCs定制的量子对量子优化优化。然而,对成本前景的无知可能阻碍这种优化的进展。在这项工作中,我们对成本变化量子电路进行了两种结果:(1) 我们在PQCs内部发现一个巨大的对称性对称性,在成本景观中产生一个巨大的对称性能性能。 或者说,这可以作为相关超光量度空间数量的一个指数削减。 (2)我们研究噪音下的对配对称的适应性,并且表明,虽然在单位噪音下保存着,非联合渠道可以打破这些对模型的对等的对等的对质性结构进行解,并且提升了微型的对微型的对质性分析,使微系统进行多次的对等的对等的对称。